Abstract
The impacts of (repeat) bleaching events and the differential heat stress susceptibility of hard coral taxa are largely unknown in Malaysia, although it is part of the greater coral triangle. Here we determined bleaching trajectories of 46 hard coral taxa across- and within-reef scales based on data recorded during the first reported back-to-back coral bleaching occurrences in Malaysia between May 2019 and September 2020. Although the severity of coral bleaching in both years did not correspond to the rather small magnitude of heat stress observed, i.e., Degree Heating Weeks (DHW) of 1.05 °C-weeks and 0 °C-weeks in 2019 and 2020 respectively, we observed high levels of bleaching (55.21% and 26.63% of all surveyed colonies in 2019 and 2020, respectively). Notably, the bleaching response for both consecutive years was highly taxon-specific and significantly varied across- and within-reef scales. Mortality rates overall were low following the 2019 event, likely due to a rapid decrease in heat stress. Five of the 46 surveyed hard coral taxa exhibited more severe bleaching in 2020, despite a lower heat stress load. Interestingly, we observed low bleaching of ascribed susceptible taxa such as Acropora and Montipora, while we found taxa considered to be resilient, e.g. Heliopora and Porites, to exhibit severe bleaching, suggesting a reversal of bleaching hierarchies of taxa over time. Our findings provide a foundation for further coral bleaching studies in a region with few published records to enable more accurate regional assessments and to follow the trajectory of future coral bleaching events.
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Introduction
Coral bleaching refers to the whitening of coral tissue due to the disruption of the coral-Symbiodiniaceae relationship under heat stress. Although several stressors can induce bleaching (Jaap 1979; Lesser 2011; Rädecker et al. 2021), the association between the coral host and its specific algal endosymbiont assemblage is considered to contribute to bleaching susceptibilities of coral taxa (Baker et al. 2004; Hume et al. 2020). Under non-stressful conditions, photosynthetic Symbiodiniaceae algae provide the coral’s energy requirements to build calcium carbonate skeletons, which in turn provide the backbone of the three-dimensional structure of coral reefs and habitat for one third of all described marine species (Muscatine 1990; LaJeunesse et al. 2018).
The spatial and temporal extent of thermal stress events are increasing in all ocean basins (Skirving et al. 2019; Eakin et al. 2022; Reimer et al. 2024), making the understanding of the cumulative and interactive impacts of repeat (i.e., back-to-back) bleaching events a critical component for accurately projecting the future of reef ecosystems and to implement active interventions (Hughes et al. 2021; Voolstra et al. 2021). It is no longer feasible to fully understand the impacts of coral bleaching by investigating isolated events, nor to assess ecosystem states without considering the legacy effects of previous disturbances (Hughes et al. 2019; Slattery et al. 2019; Johnston et al. 2020; Evensen et al 2022; Lachs et al. 2023). In particular, because coral species exhibit differential susceptibility to heat stress, forecasting the trajectories of tropical coral reefs is not possible without knowledge on the response of various hard coral taxa to repeat thermal stress events (Hackerott et al. 2021; Hughes et al. 2021; Wall et al. 2021; Evensen et al. 2022). Furthermore, it is critical to understand coral bleaching by considering within-reef heterogeneity (Pineda et al. 2013; Fordyce et al. 2019; Voolstra et al. 2020). Such knowledge contributes to understanding how environments drive bleaching outcomes and stipulate adaptive responses (Thomas et al. 2023). Ultimately, dynamic physico-chemical and environmental reef settings (Oliver and Palumbi 2011) in combination with coral holobiont genotypes drive bleaching outcomes (van Woesik et al. 2022), which makes it necessary to assess bleaching responses within and between coral taxa and across environmentally distinct reef sites (Safaie et al. 2018; Suggett and Smith 2020).
In Peninsular Malaysia, a region with over 4000 km2 of coral reef cover and over 500 hard coral species (Huang et al. 2015), severe heat stress exposure is predicted to result in annual severe coral bleaching by as soon as 2035 (van Hooidonk et al. 2020). However, detailed surveys of coral bleaching severity, associated mortality, and recovery are not yet available for Malaysian reefs. The first general mass bleaching observations in Malaysia were made during the severe pan-tropical coral bleaching event in 1998 (Kushairi 1998). In 2010, partial investigations of taxon-specific bleaching responses identified a putative change in bleaching susceptibilities of taxa (Guest et al. 2012), and severe bleaching was observed across the east coast of Peninsular Malaysia in 2010 (Tan and Heron 2011; Guest et al. 2012). Nonetheless, these observations were based on a single survey at each site, and neither differences between reef sites and environments (e.g., across depth), nor bleaching outcomes (e.g., bleaching driven mortality) were investigated (Claar and Baum 2019).
Here, we report on the spatial and temporal bleaching trajectories of 46 hard coral taxa across the first observed back-to-back coral bleaching events in Peninsular Malaysia. These findings are contextualized to previous mass bleaching events in this region (Tan and Heron 2011; Kimura et al. 2014) to provide a brief historical context of previous thermal stress events and assessment of putative changes in taxon-specific bleaching susceptibility. The differential bleaching susceptibility of taxa as a function of wind and water depth is also explored.
Methods
Reef sites
The eastern coast of Peninsular Malaysia is a dynamic environment with significant seasonal fluctuations in rainfall, wind force, and sea temperatures predominantly influenced by the region’s monsoon cycle (Moten et al. 2014). As such, intra-annual sea surface temperature (SST) varies between 26 °C during the northeast monsoon (from November to February) when rainfall, wind forcing, and turbidity are highest and 31 °C between May and June, when sea conditions are calmest (Supplementary Material, ESM 1). Therefore, historically, heat stress induced coral bleaching in Malaysia exclusively occurred between the months of April and October (Tan and Heron 2011; Guest et al. 2012; Kimura et al. 2014). We investigated four reef sites around Pulau Lang Tengah (5°47’N, 102°53’E) within the Redang Marine Park (a declared no-take fishing zone) in Northeast Peninsular Malaysia (Fig. 1). Although there is no permanent human population on the island, there are three tourist beach resorts operating seasonally between March and October. In general, tourist numbers and activities (e.g., snorkeling and SCUBA diving) are low in comparison to other Malaysian islands and are not considered a significant driver of coral reef degradation at present. Tidal ranges at the study location are approximately 2 m between April and October (https://www.worldtides.info), and there are no freshwater streams discharging into the sea.
Two windward sites, Batu Bulan and Tanjung Telunjuk, and two leeward sites, House Reef and Secret Reef, were chosen to assess how individual coral taxa respond to the interactions between thermal stress, water depth (sensu Baird et al. 2018; Frade et al. 2018), and differential wind exposure (McClanahan and Maina 2003; Pineda et al. 2013). Wind frequency direction was determined using web-based products from historical data recorded between 2008–2017 (Global Wind Atlas 3.0 2021). Based on a 2019 survey (Bernard et al. 2023), the selected reef sites range from ‘coral-dominated’ to ‘rubble-dominated’, due to marked differences in live hard coral cover, coral density, diversity, and benthic substrate composition. For example, the average live hard coral cover at Batu Bulan is 43.37% with the extent of coral rubble (11.82% benthic substrate cover) and sand (14.37% benthic substrate cover) being substantially lower than at the leeward sites (i.e., 39.61% coral rubble and 48.11% sand cover at House Reef). The hard coral assemblage at Batu Bulan is composed of 66 morpho-taxa with an average coral colony density of 25.7 colonies m−2. Morphologically, this reef site is dominated by massive taxa (31.90% of measured live hard coral cover), encrusting taxa (30.75%), and encrusting taxa with up-growths (25.09%). In contrast, at the leeward sites, the reefs are presently dominated by branching (69.00% of measured live hard coral cover) and encrusting taxa with up-growths (14.39%), whereas live hard coral cover (8.78%), the number of morpho-taxa (n = 38), and the average coral density (9.2 colonies m−2) are notably lower. Of note, live hard coral cover and colony density decline at all reef sites with depth. A survey in 2018 measured high live hard coral cover (i.e., > 45%) at Tanjung Telunjuk (Szereday, unpublished data), similar to surveys conducted in 2000 (41.3% live hard coral cover; Harborne et al. 2000).
Thermal stress metrics
Sea surface temperature (SST) data for Pulau Lang Tengah were sourced from the National Oceanic and Atmospheric Administration's (NOAA) Coral Reef Watch (CRW) version 3.1 (NOAA, Coral Reef Watch 2014), binned to the nearest 5 km2 satellite pixel (5°46′30.0"N, 102°52′30.0"E), and accessed through the ERDDAP website (https://pae-paha.pacioos.hawaii.edu/erddap/griddap/dhw_5km.html) (Liu et al. 2014). Thermal stress accumulation is expressed in Degree Heating Weeks (DHW described in °C-weeks) (Wellington et al. 2001) with ecologically impactful coral bleaching generally being observed at ≥ 4 °C-weeks, corresponding to a temperature of ≥ 1 °C above the long-term maximum monthly mean (MMM) for 4 weeks. Central to the DHW metric is the universal bleaching threshold concept of MMM + 1 °C (Glynn and D’croz 1990), below which thermal stress is not considered. However, this universally fixed threshold concept has been challenged previously, positing that more fine-scale temporal heat stress metrics may be more representative in certain cases (Whitaker and DeCarlo 2024; Neo et al. 2023; McClanahan et al. 2019; McClanahan 2022). For instance, periods of heat stress can be expressed as daily SSTs exceeding the MMM, irrespective of the + 1 °C threshold (Gleeson and Strong 1995; van Hooidonk and Huber 2009; van Hooidonk et al. 2013). Following this, we calculated nDHW (Eq. 1) as described by DeCarlo (2020) as the cumulative thermal stress over 9 weeks considering any instance where the average daily SST exceeded the local MMM.
The nDHW metric was calculated based on satellite temperature data for 2019 and 2020, and for 2020 the nDHW was additionally calculated using in situ temperature data at a reef site scale.
In situ reef temperature data, bleaching thresholds, and diel temperature profiles
Temperature loggers (HOBO 64 K Pendant, Onset Computer Corporation, USA) were deployed at 8 m depth adjacent to the transect sites at House Reef and Tanjung Telunjuk. Due to a loss of loggers at Batu Bulan, we used additional data from the nearest temperature logging site at Batu Kucing (Fig. 1) to establish reef scale temperature profiles. The comparative temperature data analysis between in situ loggers and satellite data is based on data ranging from 12 September 2019 to 30 September 2020 (19,635 measurements) using mean nightly temperature values, as satellite monitoring is only available for nightly measurements.
To further assess the interaction of site-specific temperature variability and bleaching responses (Safaie et al. 2018), we examined site-specific diel temperature ranges (DTRs), defined as the difference between the minimum and maximum temperature values across a 24 h period, a co-variate shown to impact hard coral bleaching response (Barshis et al. 2018; Safaie et al. 2018). DTRs were calculated for each reef site. Reef-specific DTRs were summed over the following time spans to investigate seasonal differences of DTRs across sites: (i) DTRTotal from 12 September 2019 to 30 September 2020, (ii) DTRBleachingSeason from 1 April 2020 to 30 September 2020, (iii) DTRPeakSummerSeason from 1 May to 31 July 2020, (iv) DTRMonsoon from 31 October 2019 to 31 March 2020, and (v) DTR60 and DTR90 to indicate the 60- and 90-day period preceding the first bleaching observation in 2020 (20 June 2020). We used a non-parametric Kruskal–Wallis test, followed by a Nemenyi’s test with a Bonferroni correction, to examine pairwise differences of reef site DTRs.
Benthic surveys
Bleaching of hard coral taxa was surveyed over two consecutive years in 2019 and 2020. To account for the possible impact of survey timing on taxon-specific bleaching outcomes (Claar and Baum 2019), surveys were conducted during the peak of the heat stress events in 2019 and 2020, i.e., 6 and 9 days after the first observations of widespread bleaching, respectively. In addition, putative recovery and mortality from the June 2019 bleaching event was surveyed in October 2019 at the end of the 2019 heat stress event and in April 2020 between heat stress events. Since transect surveys were not repeated in September 2020, assessment of putative bleaching-associated mortality following the 2020 bleaching episode are not available. Site-specific survey dates and time of max nDHW are available in the Supplement (ESM 2). Benthic surveys were conducted along marked transects. A total of seven 10×1 m belt transects for each of the four sites were laid parallel to the shore on the shallow reef between 5 to 7 m (mean depth = 6 m) and on the deeper reef slope between 10 to 14 m (mean depth = 12 m). Each transect was marked with rebar stakes at the start, middle, and end point. Transects were video recorded during each survey occasion for reference to ensure correct repositioning and redeployment of the transect tape during subsequent surveys. A total of > 1,800 coral colonies were surveyed, ranging from 323 to 663 colonies per site (mean = 469.25 colonies/site).
Colonies encountered along the belt transects were recorded and identified to the genus level in addition to their respective growth morphology (e.g., massive Porites, encrusting Porites). The octocoral Heliopora coerulea was included in these surveys due to its reef-building importance on Indo-Pacific coral reefs (Colgan 1984) and its putative superior heat stress tolerance (Phongsuwan and Changsang 2012; Harri et al., 2014; Raymundo et al. 2019). Bleaching categories were assigned for each coral colony as follows: B1 (no bleaching), B2 (pale live), B3 (≤ 33% of colony surface bleached), B4 (34–66% bleaching), B5 (67–90% bleaching), B6 (> 90% of colony surface bleached). Bleaching-associated mortality was also recorded. Bleaching-associated mortality was differentiated from previous mortality based on the integrity of dead coral skeleton (i.e., uneroded corallites and skeletal features) and was distinguished from predation-inflicted mortality based on the absence/presence of distinctive predation markings of typical coral predators such as Crown-of-thorns starfish and Drupella snails (Beeden et al. 2008). Colony mortality was separated into the following categories to account for partial colony mortality: M1 (≤ 33% of colony surface dead), M2 (34–66% dead), M3 (67–90% dead), and M4 (> 90% dead). Percentages of colony surface bleached or dead, were visually estimated by the same observer across all survey occasions. To determine the severity of bleaching for each morpho-taxon, the percentage of colonies per morpho-taxon in each bleaching category (B1–B6) was determined to calculate the Bleaching Response Index (BRI) (McClanahan et al. 2007a) based on Eq. (2).
The BRI Index is a normalized and weighted measure on a 0–100 scale, whereby higher values indicate more severe bleaching. In addition, a bleaching mortality index (BMI) was determined (Eq. 3) to account for partial- and whole-colony mortality following bleaching:
The combined bleaching response of all taxa across depth, reef sites (e.g., leeward and windward), and within-reef scales (wind condition and depth combined per site) was determined with the scale-specific bleaching susceptibility index (BSI) (McClanahan et al. 2007b), where BRi is the taxon-specific bleaching response index, Di is the relative density of each taxon, and N is the total number of coral taxa recorded at each reef scale (Eq. 4). Summing each morpho-taxon’s BSI gave a site-specific bleaching index factoring in the relative density and total number of taxa. Taxa with less than five observations were excluded, given that rare taxa can significantly bias the BSI.
Statistical analysis
Coral bleaching is influenced by the interaction of environmental variables and taxon-specific susceptibility. To investigate drivers of coral bleaching at the reef scale, a generalized linear model (‘glm’) (Nelder and Wedderburn 1972) with binomial distribution of bleaching categories [0-unbleached (B1); 1-bleached (B2–B6)], and a logit-link function was modelled to investigate the bleaching response of hard coral taxa. We tested the severity of coral bleaching in response to: ‘wind’ (leeward vs. windward), ‘depth’ (shallow vs deep), ‘site’ (four sites), ‘habitat’ (i.e., leeward shallow, leeward deep, windward shallow, windward deep), ‘genus’, ‘morpho-taxon’, and ‘max nDHW’ (corresponding to the maximum nDHW value recorded during each event). The variable ‘year’ was excluded since it is colinear with the variable ‘max nDHW’. Thus, any significant correlations between ‘max nDHW’ and bleaching response reflect significant differences in bleaching response across the two bleaching years. Explanatory variables were examined for multicollinearity prior to analysis, and the variance inflation factor (VIF) was determined using the package ‘car’ (Fox and Weisberg 2018). Any covariate with a VIF value > 5 was rejected. The ‘drop1’ function with a ‘chisq’ test for logistic regression was used to remove redundant explanatory variables. To obtain the ‘best fit model’, all models were tested for best-fit with the Akaike Information Criterion (AIC) (package ‘AICcmodavg’) and were compared based on the information score adjusted for small sample size (AICc) and Akaike weights to compare the relative predictive power of each model. The distribution of the model’s residuals was visually examined for normality by graphing Q-Q plots. According to the ‘best fit model’, bleaching response of 15 hard coral morpho-taxa (with at least ten observations) was significant and this model was selected to re-test each explanatory variable for each morpho-taxon independently, further adjusting the model with the ‘drop1’ function (but refraining from adding new variables). Finally, we used hierarchical partitioning to calculate the relative importance of each explanatory variable (i.e., percent of explained variation) using the ‘hier.part’ package (Walsh and MacNally 2013). All glm analyses were performed in R Studio version 4.1.0 (R Core Team 2021) using the packages ‘modEVA’ (Barbosa et al. 2014) and ‘car’ (Fox and Weisberg 2018). Furthermore, general linear models were used to compare bleaching responses of individual morpho-taxa across depth and wind conditions for each bleaching event. To determine drivers of mortality, we correlated mortality data recorded in October 2019 with the variables ‘morpho-taxon’, ‘depth’, and ‘wind’, considering that the observed mortality was due to excessive thermal stress in the months prior. Following generalized linear model testing, we conducted post hoc tests to compare bleaching responses at the within-reef scale (e.g., leeward shallow vs. leeward deep) and between reef sites (e.g., leeward shallow vs. windward shallow). Here, individual taxa with at least 10 observations at three of the four within-reef scales were considered using the ‘emmeans’ package v1.6.3 to conduct a Tukey’s HSD post hoc test for unequal sample size (Lenth 2021) and a Dunn’s correction of p-values. Finally, Tukey’s HSD post hoc tests were conducted for morpho-taxa whose bleaching response increased in 2020, despite lower thermal stress.
Results
Thermal stress and in situ thermal regimes
Based on NOAA CRW data, accumulated thermal stress reached a maximum of 1.05 °C-weeks in 2019 and 0 °C-weeks in 2020. This contrasts with the nDHW metric, which determined 6.68 °C-weeks in 2019 and 4.47 °C-weeks in 2020, respectively (Fig. 2), in line with the expected widespread bleaching response at > 6 °C-weeks in 2019 and the less prevalent bleaching at ~ 4 °C-weeks in 2020. Thus, the nDHW metric provided a more accurate indication than the DHW metric considering the level of bleaching observed.
In situ temperature measurements closely correlated with satellite measurements over the monitored period from September 2019 to September 2020 (r = 0.97, p < 0.001). However, a discrepancy with a mean difference of 0.53 ± 0.25 °C (SD) (Fig. 2) was observed, which further increased to 0.63 ± 0.26 °C when analyzing temperature data for the 2020 bleaching season (i.e., April–September), reducing correlation between datasets during this period (r = 0.76, p < 0.001) (ESM 3). Reef-scale MMMs varied slightly (30.28–30.39 °C), accounting for differences in accumulated thermal stress at the reef-scale (ESM 4). Average diel temperature variations (DTR) of each time series were significantly more variable at leeward sites compared to windward sites, except for DTRMS (ESM 5), indicating that each reef site experienced distinct thermal regimes during the period in which coral bleaching occurred (ESM 5, ESM 6).
Predictors of bleaching severity
To identify predictors of bleaching, we constructed a best fit model based on abiotic and coral bleaching data (see Methods, ESM 7). Analyzing the bleaching response of all coral taxa combined, the variables ‘max nDHW’, ‘morpho-taxon’, ‘depth’, and ‘wind’ were significant predictors of the bleaching response (Table 1), whereby bleaching was significantly less at windward sites, at shallow depths, and during the second bleaching event in 2020 (at 4.43 °C-weeks nDHWs). However, not all coral taxa bleached less at windward sites and at shallow depths (ESM 8, ESM 9). Certain abundant taxa, such as foliose Pavona, submassive Platygyra, and massive Porites, bleached significantly more with increasing depth (ESM 8). In general, bleaching was significant for 12 morpho-taxa (Table 2, ESM 7), and ‘max nDHW’ accounted for most of the explained variance for seven taxa, while the bleaching response of five taxa was more dynamic and varied across environmental reef-scales considering ‘wind’ and ‘depth’ (Table 2, ESM 8, ESM 9).
Coral taxon-specific variability in bleaching response, recovery, and mortality
Taxon-specific differences in bleaching were pronounced (Table 3). In June 2019, 55.21% of surveyed colonies (n = 1,882) were bleached, of which 30.29% (n = 570) were severely bleached (i.e., > 66% of colony surface) (Fig. 3). The general bleaching response index (BRI) in June 2019 was 36 out of 100, suggesting a moderate bleaching intensity on the population level. Importantly, however, the BRI varied greatly across morpho-taxa (Table 3). For instance, of the more abundant morpho-taxa (i.e., n > 10 colonies; 27 morpho-taxa total), seven morpho-taxa showed a severe BRI above 50. Notably, branching Echinopora (BRI = 86) and Heliopora coreluea (BRI = 82) showed the highest bleaching susceptibility in June 2019, followed by encrusting Goniastrea, foliose Pavona, encrusting Cyphastrea, massive Porites, and encrusting Porites (all BRI > 50, Table 3). In addition, three morpho-taxa had a higher BRI than the average population BRI of 36: encrusting Dipsastraea, Pocillopora, and solitary Fungia. The most abundant taxa Porites spp. bleached moderately (BRI = 34). By contrast, bleaching levels of Acropora and Montipora morpho-taxa, which were historically considered most susceptible, were low or mild (ESM 10). Notably, eight abundant coral taxa had a BRI ≤ 10. Thus, although overall bleaching levels were severe in 2019, substantial differences across morpho-taxa were observed.
Based on transect surveys in October 2019, 91.68% of surveyed colonies (n = 1,826) appeared fully recovered with an overall low BRI (BRI = 3) (Table 3, Fig. 3, ESM 11). Concurrently, the BMI was relatively low across all taxa (BMI = 1.71, n = 1,826). We observed full colony mortality for only 1.10% of colonies surveyed (n = 20), while 1.81% (n = 33) experienced partial colony mortality. Notably, Heliopora coerulea showed the highest BMI (11.36), with 14.14% of surveyed colonies exhibiting patches of dead tissue and 10.10% suffering full mortality in October 2019 (ESM 12). Importantly, mortality was significantly correlated with windward sites, as 86.79% of all colonies with dead tissue (n = 46) and 90.48% of fully dead colonies (n = 19) were recorded at windward sites (ESM 13). In line with this, no bleaching was observed during April 2020, suggesting that coral taxa recovered from the 2019 bleaching event.
For the consecutive back-to-back bleaching event in June 2020, we recorded moderate and frequent bleaching with a bleaching prevalence of 26.63% of surveyed colonies (n = 1,884). Bleaching intensity was lower compared to 2019, as only 6.26% of colonies exhibited severe bleaching. Average population-level BRI of all taxa was 12, and Heliopora coerulea showed the highest individual bleaching response (BRI = 41), exhibiting high thermal susceptibility for both consecutive years. Notably, despite the overall lower thermal stress in 2020, bleaching prevalence moderately increased for five taxa: corymbose Acropora, Dipsastraea, Galaxea, Leptastrea, and Platygyra (all encrusting). However, these BRI increases over successive bleaching occurrences were insignificant following Tukey’s HSD post hoc testing (ESM 14).
Bleaching response across- and within-reef scales
When accounting for the relative abundance of morpho-taxa (i.e., BSI), leeward deep reef sites were the most bleaching susceptible during both consecutive bleaching events (Table 4). At windward sites, deeper sites exhibited a higher bleaching prevalence and response than shallow sites. Ultimately, bleaching prevalence and response across wind conditions and depth were driven by the susceptibility and abundance of morpho-taxa, as corroborated by the site-susceptibility bleaching index (Table 4, Fig. 4). For instance, leeward deep was significantly more bleached in both years (Fig. 5, ESM 15) as a result of the higher bleaching susceptibility and dominant abundance of foliose Pavona (Fig. 5). Foliose Pavona colonies bleached severely at leeward deep, strongly at leeward shallow, and did not bleach at windward shallow. Depth and wind combined accounted for 95.26% of the observed variance for foliose Pavona (Table 2). Solitary Fungia bleached similarly across all reef sites. In contrast, massive Porites bleached significantly less at shallow windward sites in both years, while the BRI of massive Porites at windward deep was substantially more severe compared to windward shallow, demonstrating clear within-reef scale differences in BRI as a function of depth. Similarly, Porites spp. showed a strong bleaching response at all scales, but not at windward shallow sites in 2019. Combined, these abundant taxa were representative of bleaching responses at across- and within-reef scales, as leeward deep and windward shallow were overall the most and least bleached reef scales in 2019, respectively (Fig. 5). In 2020, bleaching response at leeward deep was significantly higher compared to all other reefs.
Discussion
Regional thermal stress levels inducing bleaching
The nDHW metric better reflected coral bleaching observed in situ for both bleaching events than the broadly used DHW metric. Such local adjustments of common thermal stress metrics can improve predictive power for thermal stress analysis (van Hooidonk and Huber 2009; Hooidonk et al. 2013; McClanahan 2022; Whitaker and DeCarlo 2024). This is not unexpected, as previous studies have noted such discrepancies, specifically across annual temperature peaks (Strong et al., 2002; Venegas et al. 2019; Klepac and Barshis 2022). Field observations in the Red Sea (Monroe et al. 2018) and in several Indian Ocean locations (McClanahan et al. 2007b) have reported widespread coral bleaching at below DHW threshold levels (i.e., < 4 °C-weeks) and in the Caribbean ~ 30% of coral bleaching occurred at DHW of 0 °C-weeks (Eakin et al. 2010), highlighting regional differences that may necessitate updating commonly used universal thresholds to better predict and reflect bleaching outcomes (Whitaker and DeCarlo 2024).
During the 2010 mass bleaching event in southeast Peninsular Malaysia, Guest et al. (2012) concluded that NOAA CRW was underestimating experienced thermal stress, likely due to the underestimation of the importance of daily SST peaks. In line with this, thermal stress based on nDHW corresponded to the expected occurrence of widespread bleaching at 4–8 °C-weeks (Heron et al. 2016; Kayanne 2017; Hughes et al. 2018a). The levels of thermal stress determined by means of nDHW are in line with the level of bleaching observed in 2019, when coral bleaching was significantly more severe at 6.77 °C-weeks compared to 4.43 °C-weeks in 2020. Notably, mortality associated with the 2019 bleaching was minor, further denoting the putative mortality threshold of > 8 °C-weeks (Wellington et al. 2001; Eakin et al. 2010; Hughes et al. 2018a). Based on the available literature, bleaching was observed regionally in 2010 and 2014 (Tan and Heron 2011; Kimura et al. 2014) at nDHW 8.54 °C-weeks and 6.39 °C-weeks respectively, but not in 2013 (5.44 °C-weeks) or 2016 (4.62 °C-weeks). Therefore, based on the published and collected data, a regional bleaching threshold of nDHW ≥ 6 °C-weeks emerges, at which ecologically significant bleaching occurs. Further regional adjustment based on diel in situ data is poised to further refine bleaching thresholds and taxon-specific sensitivities (McClanahan et al. 2020a) across Peninsular Malaysia.
Back-to-back bleaching provides insight to coral resilience
The back-to-back successive bleaching events in 2019 and 2020 represented a decadal local climax of rapid ocean warming (Cheng et al. 2021) (ESM 1). This study is the first to report back-to-back coral bleaching in this region and elaborates on taxon-specific bleaching response and recovery trajectories. One of the key insights gained is the substantial difference in bleaching response across morpho-taxa and between bleaching events. Bleaching-induced mortality in 2019 was very low. Only five morpho-taxa bleached at higher levels in 2020, despite lower levels of thermal stress, suggesting potential legacy effects (Hughes et al. 2019). Although these differences were insignificant, thermal stress in 2020 was below the proposed regional bleaching threshold (see above).
A common observation of in situ bleaching studies is lower bleaching levels during the second (and typically more severe) of back-to-back thermal events (Gintert et al. 2018; Fisch et al. 2019; Harrison et al., 2019). Notably, these studies often report considerably higher bleaching-associated mortality during the first bleaching episode (Head et al. 2019; Hughes et al. 2019; Dalton et al. 2020), suggesting that thermally susceptible colonies may be removed from the population (Loya et al. 2001; van Woesik et al. 2011; Stuart-Smith et al. 2018). Consequentially, the cumulative impacts of repeat back-to-back thermal bleaching on coral comunities depends on the composition of species and their relative susceptibility to the magnitude and amplitude of prior thermal stress experienced (Ritson-Williams and Gates 2020). Here, the locally most abundant morpho-taxa (i.e., encrusting and massive Porites, Heliopora coerulea, foliose Pavona, submassive and encrusting Platygyra, and Pocillopora spp.; see Bernard et al. 2023 for a 2019 census) exhibited bleaching in both years, whereas the majority of other taxa (of which some are equally abundant) showed remarkably low levels of bleaching. Specifically, taxa such as Acropora and Montipora that are typically considered thermally susceptible (Pratchett et al. 2013) bleached less in 2020, while the opposite was observed for some taxa that are generally considered thermally resilient (e.g., Heliopora coerulea, massive Porites, etc.). This ‘reversal’ of bleaching hierarchies has been documented in southeast Peninsular Malaysia in 2010 (Guest et al. 2012) and more recently on larger geographical scales and across diverse eco-regions (McClanahan et al. 2020a, 2020b), suggesting that some degree of adaptation to heat stress is occurring across geographic regions and populations (Sully et al. 2019; Lachs et al. 2023). Whether the low bleaching response of these taxa at significant levels of thermal stress in 2019 and 2020 is the result of ‘thermal weeding’ of thermally susceptible colonies or due to an increase in resilience from prior exposure to thermal stress (sensu Guest et al. 2012) is unclear due to the lack of sufficient data on bleaching response and mortality in this region.
While the overarchingly low to mild bleaching response of most taxa across the 2019 and 2020 bleaching events suggests high thermal tolerance relative to the levels of thermal stress (in line with very low bleaching associated mortality rates), it should be noted that we observed a rapid and acute onset of thermal stress in 2019 that resolved equally quickly (Fig. 2). Extended duration of excess thermal stress is increasingly recognized as one decisive factor in determining severity, mortality, and recovery from bleaching (Eakin et al. 2019, 2022; Skirving et al. 2019), in contrast to the short-term and acute heat stress observed for the 2019 coral bleaching event. Thus, we suggest that bleaching and mortality rates were mitigated by the rapid decline of thermal stress in 2019 (Wellington 2001; Eakin et al. 2010; Hughes et al. 2018a).
By comparison, the 2020 bleaching event is the first observation of thermal coral bleaching in Malaysia during a La Niña year, and mild to moderate coral bleaching was reported across the extent of the Malaysian east coast (Reef Check Malaysia 2020). Thermal stress accumulated to a maximum of 4.77 °C-weeks (nDHW) based on satellite data, although interpolating satellite and diel in situ data, a maximum of 5.08 °C-weeks could be determined. This is still below the suggested regional threshold of ≥ 6.0 °C-weeks (nDHW).
Taken together, bleaching responses of taxa were consistent with thermal stress levels observed across events, noting a significant dissimilarity of taxon-specific bleaching thresholds. One notable finding is the high bleaching susceptibility of Heliopora coerulea (Table 3). In both years, H. coerulea showed the highest bleaching prevalence, severity, and mortality of all surveyed taxa, particularly at shallow sites (Table 4 and 5, ESM 12). A wide range of field studies across the Indo- and Central-Pacific regions (e.g., Palau, Japan, Western Australia, Kiribati, Guam) as well as the Indian Ocean (e.g., the Andaman Sea and the Maldives) classified this taxon as bleaching tolerant (Paulay and Benayahu 1999; Kayanne et al. 2002; Schumacher et al. 2005; Phongsuwan and Changsang 2012; Harri et al., 2014; Raymundo et al. 2019). Therefore, it has been suggested that H. coerulea may replace scleractinian taxa in the future as dominant reef-builders (Courtney et al. 2021). Counter to this, our findings suggest severe bleaching susceptibility of H. coerulea, and further research is warranted.
It is important to note that the symbiotic associations between coral hosts and their algal symbionts may contribute to the observed taxon-specific differences in bleaching response (Hume et al. 2020; Baker et al. 2004). Presently, data on species-specific coral host-algal symbiont associations are limited in Peninsular Malaysia (Lee et al. 2022) and require urgent investigation to identify heat tolerant taxa and associated holobiont compositions. Shifts in Symbiodiniaceae composition to heat tolerant algal species have been observed after periods of heat stress (Grottoli et al. 2014) and supposedly co-facilitate changes in bleaching hierarchies over time (Baker et al. 2004; Silverstein et al. 2015). However, novel associations do not universally persist (LaJeunesse et al. 2009; Hume et al. 2020), as fine-scale differences in thermal and depth regime on individual reef sites are also important determinants impacting the persistence of stress-induced changes in the Symbiodiniaceae composition (Baker et al. 2013; de Souza et al. 2023). Ultimately, quantifying such associations with reference to reef heterogeneity is required to understand mechanisms of heat tolerance of the coral host.
Bleaching response across- and within-reef scales
At the across-reef scale, our analysis of reef-specific diel temperature variations (DTR) shows that DTRs were significantly more variable at leeward sites for all seasonal time series of the bleaching period (ESM 5). Further, generalized linear model analysis revealed significant differences across depth and wind exposure overall (Table 1and 2, ESM 8–9) resulting in the lowest bleaching response at shallow windward sites. This contrasts with previous studies that found that leeward coral reef sites harbor more thermally tolerant corals (McClanahan and Maina 2003; Pineda et al. 2013; Voolstra et al. 2020), putatively due to greater diel variability in thermal regimes (Oliver and Palumbi 2011; Barshis et al. 2018; Thomas et al. 2018).
With regard to depth differences, we found higher bleaching prevalence and response at 10–14 m depth than at 5–7 m depth, echoing conclusions from previous studies that depth does not necessarily provide refuge from thermal coral bleaching (Frade et al. 2018; Venegas et al. 2019). However, in this study the observed pattern is the result of the relatively higher abundance of specific taxa that bleached less at shallow depth (e.g., massive Porites, Porites spp.). Ultimately, bleaching response as a function of depth is highly taxon-specific and varies across regions and local reef environments (Muir et al. 2017; Baird et al. 2018; Crosbie et al. 2019; Raymundo et al. 2019).
We found the bleaching response of Porites spp. to be significantly different at windward shallow compared to all other sites, irrespective of depth. Further, foliose Pavona did not bleach at windward shallow in either year, in contrast to leeward shallow sites (albeit sample sizes differed among sites). As coral taxa were distributed unequally across these spatial scales, it was not possible to compare more taxa across all sites. Thus, increasing the overall sampling area would be beneficial for future investigations. Additionally, environmental covariates such as in situ wind, temperature, and light measurements would be needed to establish corroborative relationships between taxon-specific bleaching response and across- or within-reef scales. Our data highlights that across- and within-reef scale phenomena are interconnected. The combined effects of wind and depth influence taxon-specific bleaching responses, implying that dynamic reef environments contribute to the differential bleaching response of hard coral taxa. Ultimately, known stressors that reduce coral fitness and potentially exacerbate the bleaching response, such as nutrient enrichment due to wastewater discharge (Donovan et al. 2021), are unlikely to have influenced the observed bleaching response, as windward sites are not near wastewater effluents (e.g., river estuaries, coastal resorts) and septic tanks are installed at leeward sites to prevent nutrient input to coral reefs.
Conclusions
The increasing spatial and temporal extent of thermal stress events is projected to result in more severe annual coral bleaching events on a global scale. However, detailed data are typically only available for a few regions, hampering the forecasting of bleaching trajectories under climate change. Here, we determined bleaching trajectories of 46 hard coral taxa across- and within-reef scales based on data recorded during the first reported back-to-back coral bleaching events in Malaysia between May 2019 and September 2020. We observed high levels of bleaching (55.21% and 26.63% of all surveyed colonies in 2019 and 2020, respectively) associated with high thermal stress levels when considering an nDHW metric that better explained observed in situ bleaching levels than the common DHW metric (6.68 °C-weeks and 4.77 °C-weeks in 2019 and 2020, respectively, for the nDHW metric in contrast to 1.05 °C-weeks and 0.00 °C-weeks in 2019 and 2020, respectively, for the DHW metric). We found broad dispersion of taxon-specific bleaching prevalence, whereby susceptible taxa were found to exhibit bleaching at ~ 4.5 °C-weeks, while widespread and severe bleaching occurred at ≥ 6 °C-weeks (nDHW). The data gathered here provides a baseline to monitor and project bleaching prevalence and severity in Peninsular Malaysia as oceans continue to warm. To support field observations of differential bleaching of coral taxa, future studies should identify Symbiodiniaceae assemblages associated with heat stress susceptible and tolerant coral taxa.
Data availability
The datasets analyzed are available on the Github repository: https://github.com/Coralku/Bleaching-Data-2019-2020
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Acknowledgements
Research was conducted under permit number Prk.ML.630-7Jld.5 (21) issued by the Department of Fisheries (DoF) Malaysia, and permit number 40/200/193711 (2), issued by the Ministry of Economic Affairs (MEA) Malaysia. We are grateful to Albert Apollo Chan and Dato’ Haji Munir bin Haji Mohd. Nawi from the Department of Fisheries Malaysia as well as to Muhammad Jawad bin Tajuddin (Ministry of Economic Affairs Malaysia) for supporting our research and facilitating acquisition of research permits. We are thankful to Summer Bay Resort, Lang Tengah Island, for supporting our research and providing access to their facilities. Thank you to Lang Tengah Turtle Watch for field support in 2019 and Joseph A. Henry for providing us with the temperature loggers. We are thankful to Gang Liu, Joseph A. Henry, Natasha Zulaikha, and K.L. Chew. for providing critical suggestions on the manuscript. We are thankful to the team at Rimbun Dahan for providing a ‘scientific writing’ residency.
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SS designed and conceived the study, conducted the fieldwork, analyzed the data, and wrote the original draft. AYA analyzed the data, supported scientific framework development, and edited the original draft. CRV supported scientific framework development, data interpretation, and edited the original draft. All authors edited the final draft and granted approval to submit for publication.
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Author CRV is an associate editor at ‘Marine Biology’. The authors have no further financial or non-financial interest to declare that are relevant to the content of this article.
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Author SS received in-kind support for SCUBA diving equipment and field expenses by Summer Bay Resort, Lang Tengah Island. The writing of this article was supported by a writing residency at Rimbun Dahan. No further support was received from any other organization for the submitted work.
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Szereday, S., Voolstra, C.R. & Amri, A.Y. Back-to-back bleaching events in Peninsular Malaysia (2019–2020) selectively affect hard coral taxa across- and within-reef scales. Mar Biol 171, 183 (2024). https://doi.org/10.1007/s00227-024-04495-2
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DOI: https://doi.org/10.1007/s00227-024-04495-2