Front. Mar. Sci.Frontiers in Marine ScienceFront. Mar. Sci.2296-7745Frontiers Media S.A.10.3389/fmars.2018.00484Marine ScienceOriginal ResearchRemobilization of Heavy Metals by Mangrove LeavesAlmahasheerHanan1*SerranoOscar2DuarteCarlos M.3IrigoienXabier3451Department of Biology, College of ScienceImam Abdulrahman Bin Faisal University (IAU), Dammam, Saudi Arabia2Centre for Marine Ecosystems Research, School of Science, Edith Cowan UniversityJoondalup, WA, Australia3Red Sea Research Center, King Abdullah University of Science and Technology (KAUST)Red Sea Research Center, Makkah, Saudi Arabia4Marine Research DepartmentAZTI – Tecnalia, Pasaia, Spain5IKERBASQUEBasque Foundation for Science, Bilbao, Spain
Edited by: Alberto Basset, University of Salento, Italy
Reviewed by: Punyasloke Bhadury, Indian Institute of Science Education and Research Kolkata, India; Akkur Vasudevan Raman, Andhra University, India
This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
Several studies have been carried out on heavy metal pollution in mangrove ecosystems. However, the role of mangroves in heavy metal remobilization is still relatively unknown. On one side, mangrove woody organs and soils sequester heavy metals for long time periods, but on the other hand, senescence of mangrove leaves may return these metals collected by roots to the upper layers of the soil. Here, we analyzed the concentration of chemical elements (Al, As, Cd, Cr, Cu, Fe, Mn, Mo, Ni, Pb, Sr, V, and Zn) as a function of age in mangrove leaves to understand heavy metals retention by the plant and to quantify the amounts shed with senescing leaves. In addition, we estimated metal concentrations and stocks in mangrove soils. Our results revealed that the concentration of most metals increased with leaf age, resulting in the remobilization of metals stored in soil, thereby returning metals to the upper layers of the soil during senescence of mangrove leaves. Only Cu was reabsorbed prior to shedding of leaves, a mechanism similar to that described for nutrients in mangroves globally. These results provide key data to understand mangroves role in the dynamics of heavy metals.
remediationplants uptakerhizospheredeep soilleaves ageAvicennia marinaKing Abdullah University of Science and Technology10.13039/501100004052Introduction
Inorganic pollutants such as heavy metals have both anthropogenic and earth crust origins (Lasat, 2002; Nagajyoti et al., 2010; Moore et al., 2011; Liu et al., 2018). Anthropogenic emissions in particular, have increased significantly over the last decades, e.g., in China 10 million ha of land have been polluted already (Chen et al., 2015). These metals are not degradable and get concentrated as they move up in the food chain (Wang et al., 2009; Patil et al., 2018). Nevertheless, plants usually absorb them from soil along with nutrients (Ovečka and Takáč, 2014; Novo et al., 2018), in a capacity that can be used to phytoremediate contaminated soils with heavy metals at low cost (Robinson et al., 2003; Yadegari, 2018). Many heavy metals (e.g., Co, Cu, Fe, Mn, Mo, Ni, Al, Rb, Ti, and Zn) are not toxic and play a role as essential micronutrients for plant growth until they exceed a certain limit (Appenroth, 2010; Kabata-Pendias, 2010). Others are non-essential and often toxic to plant growth (e.g., Cd, Pb, U, Cr, Ag, Hg, and Zr), while As and Se are metalloids yet are also toxic (Bothe, 2011; Shahid et al., 2013).
Green remediation is the use of plants to remove contaminants, and has been widely used, in particular in developing countries (Nouri et al., 2017). Mangroves have the potential to assist in the phytoremediation of coastal soils as they are able to grow in contaminated coastal environments (Nath et al., 2014; Chai et al., 2018). Indeed, mangrove ecosystems are very efficient at bio-accumulating metals, which together with their capacity to trap and immobilize soils resulting in soil elevation, points to an important potential role of mangrove ecosystems as metal filters and sinks in coastal areas (Wang S.-L. et al., 2013). In addition, metal concentrations in leaves reflect those in the soil and the environment, justifying its use as bio-indicators (Murray, 1985; Pinheiro et al., 2012).
However, the translocation of metals from the soil to mangrove organs, and leaves in particular, may result in the remobilization of heavy metals stored in the soil during detritus senescence. Although this will lead to a reduction of heavy metals in soils, shedding of e.g., mangrove leaves could transfer metals from deep soil layers into the soil surface and elsewhere in the ecosystem, so that rather than sequestering metals mangroves could be remobilizing pollutants within the ecosystem. Despite pollution in mangroves have been widely studied (Wang Y. et al., 2013; Zhang et al., 2014; Alzahrani et al., 2018; Kulkarni et al., 2018), and previous studies showed that mangroves have the capacity to reabsorb nutrients before shedding the leaves (Alongi et al., 2005; Zhou et al., 2010; Almahasheer et al., 2018), the fate of metals remains largely unknown (Saenger and McConchie, 2004). Therefore, the elemental fluxes between bio- and geo-spheres of mangrove ecosystems and in particular, the dynamics of heavy metals in mangrove leaves remain, to the best of our knowledge, unknown. Hence, the role of mangroves as sinks or sources of metals in polluted environments depends, to a large extent, of their capacity to reabsorb the metals before the leaves are shed.
Recently, we examined the capacity of Avicennia marina in the Red Sea to reabsorb N, P, and Fe prior to leave senescence, and despite evidence of Fe deficiency, mangroves had low resorption of Fe (42%) compared to N and P (69 and 72%, respectively; (Almahasheer et al., 2018). Whether these applies to other heavy metals or not is unknown.
Here we test the hypothesis that mangrove leaves reabsorb heavy metals before shedding them, as they do with N and P (Alongi et al., 2005; Zhou et al., 2010; Almahasheer et al., 2018). We do so by assessing the changes in heavy metal concentrations rates as a function of age in Red Sea mangrove (A. marina) leaves. Shall this hypothesis be supported, it will imply that mangroves would contribute to reducing the load of heavy metals in all soil layers, both surface and deep soils. We then evaluate the concentration and stock of heavy metals in the soil and compare it with their concentration in the overlying mangrove leaves by, estimating the leaf bio-concentration factor (BCF), to reflect the ability of plants to accumulate elements in leaves relative to soils.
Materials and MethodsSampling Leaves and Soil in Mangrove Stands
Soil cores and leaves from mangrove ecosystems were collected in November 2014 and March 2015, respectively, from four different locations in the Central Red Sea. Mangrove ecosystems were composed of monospecific stands of A. marina (Figure 1). At Thuwal Island (22°16′54.42″N 39° 5′6.12″E) and Khor Alkharar (22°58′14.81″N 38°50′44.27″E) locations, coastal development and human disturbances occur, whereas Economic City is a location under construction (22°23′31.10″N 39°7′49.07″E) and Petro Rabigh is close to an oil refinery (22°45′5.81″N 39° 0′46.90″E). Details of study locations and environmental conditions are described in Almahasheer et al. (2016b, 2018).
Location of the Central Red Sea mangrove stands sampled. The map was produced using ArcMap Version 10.2.
A total of 91 leaves were collected across the four locations and sorted based on their location in the axillary shoot starting from the first leaf near the meristem to the last attached senescing leaf (Table 1). Each leaf was placed in an individual paper bag, and stored at 4 Celsius until analyses. A total of 26 cores soil cores were collected within mangrove stands across the four locations (eight cores at Thuwal Island, eight cores at Economic City, four cores at Petro Rabigh and six cores at Khor Alkharar) using 170 cm long PVC pipes. We used two types of corers; “whole corers” consisting in PVC pipes, and “port corers” consisting in PVC pipes with pre-drilled ports (3 cm in diameter) at 6 cm intervals [see Almahasheer et al. (2017) for further details]. The port cores were subsampled using a modified 60 mL syringe (and the volume of soil recorded), while the whole cores were cut lengthwise, and the soils inside were sliced at 1 or 3 cm-thick slices using a ceramic knife. The slices were dried on the oven at 60°C until constant weight. Metal analyses were conducted in four to six soil depths per core within the top 30 cm of soil.
Mean ± SE for heavy metals concentration (mg g DW−1) and content (mg DW leaf−1) in Avicennia marina leaves from four different locations in the Central Red Sea, and the results from ANOVA and Tukey HSD post-hoc tests for differences among locations.
Location
Khor alkharar
Economic city
Petro rabigh
Thuwal Island
F ratio
(n)
(15)
(30)
(27)
(19)
Concentration (mg g DW−1)
Al
0.20778 ± 0.02328b
0.37307 ± 0.04527a
0.41386 ± 0.04088a
0.33916 ± 0.02444ab
3.82*
As
0.00216 ± 0.00033ab
0.00215 ± 0.00026b
0.00329 ± 0.00028a
0.00273 ± 0.00034ab
3.65*
Cd
0.00021 ± 0.00002a
0.00017 ± 0.00003a
0.00011 ± 0.00002a
0.00020 ± 0.00004a
1.87ns
Cr
0.00087 ± 0.00010a
0.00157 ± 0.00025a
0.00123 ± 0.00010a
0.00119 ± 0.00009a
2.30ns
Cu
0.00218 ± 0.00015a
0.00290 ± 0.00024a
0.00306 ± 0.00033a
0.00316 ± 0.00076a
0.86ns
Fe
0.26202 ± 0.03370b
0.48587 ± 0.06011a
0.55512 ± 0.05563a
0.43934 ± 0.02949ab
4.26**
Mn
0.02324 ± 0.00115b
0.02812 ± 0.00229b
0.10157 ± 0.01109a
0.02397 ± 0.00191b
34.36**
Mo
0.00282 ± 0.00022a
0.00192 ± 0.00029ab
0.00145 ± 0.00024b
0.00178 ± 0.00026ab
3.61*
Ni
0.00181 ± 0.00033a
0.00212 ± 0.00022a
0.00151 ± 0.00014a
0.00141 ± 0.00012a
2.80*
Pb
0.00866 ± 0.00081a
0.00872 ± 0.00096a
0.00790 ± 0.00065a
0.00844 ± 0.00103a
0.19ns
Sr
0.05785 ± 0.00187a
0.05976 ± 0.00136a
0.05480 ± 0.00149a
0.05848 ± 0.00233a
1.84ns
V
0.01645 ± 0.00127ab
0.01469 ± 0.00133b
0.02072 ± 0.00169a
0.02127 ± 0.00152a
4.74**
Zn
0.01606 ± 0.00529a
0.01034 ± 0.00062ab
0.01689 ± 0.00158a
0.00654 ± 0.00050b
5.49**
Content (mg DW leaf−1)
Al
0.03540 ± 0.00416b
0.08839 ± 0.01063a
0.09646 ± 0.01352a
0.06825 ± 0.00981ab
4.56**
As
0.00042 ± 0.00008a
0.00059 ± 0.00009 a
0.00075 ± 0.00009 a
0.00058 ± 0.00011a
1.65ns
Cd
0.00004 ± 0.00001a
0.00006 ± 0.00001a
0.00003 ± 0.00001a
0.00005 ± 0.00002a
0.86ns
Cr
0.00015 ± 0.00002b
0.00042 ± 0.00009a
0.00030 ± 0.00004ab
0.00026 ± 0.00005ab
2.70ns
Cu
0.00040 ± 0.00005b
0.00070 ± 0.00007a
0.00059 ± 0.00005ab
0.00054 ± 0.00009ab
2.87*
Fe
0.04362 ± 0.00538b
0.11621 ± 0.01414a
0.12953 ± 0.01808a
0.09011 ± 0.01336ab
4.95**
Mn
0.00442 ± 0.00058b
0.00724 ± 0.00081b
0.02502 ± 0.00373a
0.00565 ± 0.00111b
18.42**
Mo
0.00050 ± 0.00006a
0.00064 ± 0.00012a
0.00037 ± 0.00008a
0.00035 ± 0.00006a
2.08ns
Ni
0.00031 ± 0.00005b
0.00055 ± 0.00008a
0.00036 ± 0.00005ab
0.00030 ± 0.00005ab
3.50*
Pb
0.00160 ± 0.00024a
0.00226 ± 0.00036a
0.00172 ± 0.00021a
0.00178 ± 0.00033a
0.96ns
Sr
0.01039 ± 0.00097a
0.01572 ± 0.00157a
0.01244 ± 0.00124a
0.01238 ± 0.00184a
2.14ns
V
0.00303 ± 0.00040a
0.00405 ± 0.00053a
0.00519 ± 0.00069a
0.00511 ± 0.00090a
1.90ns
Zn
0.00230 ± 0.0004ab
0.00280 ± 0.00036ab
0.00378 ± 0.00054a
0.00132 ± 0.00021b
5.52**
= 0.05 > P > 0.01;
= P < 0.01; ns = P > 0.05.
Locations sharing the same superscript letters do not differ among themselves for a particular element.
Chemical Analysis
All leaves were photographed and dried individually at 60°C oven until constant weight. Then 0.50 mg of the leaf was digested with 6 ml concentrated HNO3 and 2 ml of H2O2 in Digi PREP digestion systems for 2 h at 95°C, as described by Spalla et al. (2009). Around 200 mg of soil was digested in 6 ml of HNO3 and 2 ml of HCL following EPA method 3052 (Kingston and Walter, 1995). All samples were left to cool and then diluted in Milli-Q water to be subsequently analyzed by Inductively Coupled Plasma-Optical Emission Spectrometry (Varian Inc. model 720-ES). Analyses of replicates and Quality Control Standards (Sigma-Aldrich, Inorganic Ventures and PerkinElmer's Pure Plusv), were carried out to ensure reproducibility of the results. In addition, spike recovery was evaluated to examine matrix effect, resulting a good recovery of heavy metals (grand average of 101%) in Standards run together with both leaves and soil samples (Table 2). Additional, information of the ICP standard operating procedure (SOP) are in Table S1.
Average of % recovery of heavy metals in Avicennia marina leaves and soil.
Leaves
Soil
Stand1
Stand2
Spiked
Dup diff.
Average
Stand1
Stand2
Spiked
Dup diff.
Average
Al
99
102
93
116
103
100
102
97
100
100
As
96
100
88
144
107
101
101
95
107
101
Cd
98
98
92
149
109
100
101
88
101
97
Cr
99
98
92
120
102
99
104
98
101
101
Cu
98
101
90
100
97
99
98
93
100
97
Fe
100
99
91
116
101
99
104
100
100
101
Mn
101
101
94
102
100
101
96
93
99
97
Mo
102
103
97
109
103
99
102
94
82
94
Ni
99
98
90
69
89
99
100
94
99
98
Pb
99
99
87
166
113
99
103
88
90
95
Sr
108
107
101
110
106
101
101
223
99
131
V
96
99
51
101
87
99
98
93
100
98
Zn
99
96
83
99
95
99
104
91
102
99
Statistical Analysis
The element content (mg DW leaf−1) was calculated as the product of element concentrations (mg element g DW−1) by the leaf dry mass (Lin and Wang, 2001). Leaf age was estimated using the plastochrone interval approach, i.e., the time in between development of a new node supporting a new leaf pair (Erickson and Michelini, 1957; Duarte et al., 1994; Coulter et al., 2001). Avicennia marina produced 9.6 nodes year−1 (Mean ± SD) resulting in an estimated Plastocron interval (PI) of 38 days (Almahasheer et al., 2016c), the time interval between production of two consecutive leaf pairs along a branch.
To calculate the flux of elements in mangrove leaves (mg element m −2 year −1) we estimated the number of leaves shed annually per square meter using the leaf production and tree density measurements reported by Almahasheer et al. (2018). The BCF reflects the ability of plants to accumulate metals (Zhang et al., 2002), and was estimated as: BCF = element leaves/elementsoil.
Metal stocks were calculated for each soil depth in each core by multiplying the soil dry bulk density by the metal concentration [see Almahasheer et al. (2017)]. Then to allow comparisons of heavy metal stocks among locations, the cumulative mass (mass heavy metal per unit area) was calculated by multiplying the soil dry bulk density (g cm−3) by the metal concentration, and used to estimate the heavy metal stocks in 30 cm thick deposits.
Statistical analyses, including descriptive statistics, linear regression analyses of age vs. element content, general linear models to test differences among stands, and Tukey HSD post-hoc test to assess pairwise differences were carried out using JMP Pro version 12.1.0., a statistical program developed by the SAS Institute.
Results
The average concentration (mg g DW−1) and contents (mg DW leaf−1) of eight and six out of the 13 heavy metals analyzed in mangrove leaves differed significantly among locations, with Petro Rabigh supporting higher concentrations than Economic City. Indeed, both Petro Raibgh and Economic City locations contained higer concentrations of heavy metals than Khor Alkarar and Thuwal Island (P < 0.05, Table 1, Tables S2,S3). Metal concentrations were independent of leaf age for most heavy metals, except for V, Cd, and As, which increased with leaf age, and Cu which decreased with leaf age (P < 0.01, Figure 2). Whereas, the content of all metals increased significantly with leaf age (P < 0.01, Figure 3). Additionally, there were significant differences in the relationships (i.e., slopes) between metal contents and leaf age (i.e., accumulation rates) among locations (ANOVA, P < 0.05, Tables S4,S5). Al, Fe, Cr, and Ni were significantly correlated among themselves in the leaves (Figure 4A, Table S6).
The increase or decrease in the concentration of metal elements with the age of Avicennia marina leaves in the Central Red Sea. The slopes of the fitted linear regressions provide an estimate of metal accumulation rate (units mg metal gDW−1). Results from ANOVA testing differences during leaf age. * = 0.05 > P > 0.01. ** = P < 0.01. Elements without stars means no significant differences (P > 0.05).
The increase of metal content with the age of Avicennia marina leaves in the Central Red Sea. The slopes of the fitted linear regressions provide an estimate of metal accumulation rate (units mg metal leaf−1). Results from ANOVA testing differences during leaf age. * = 0.05 > P > 0.01. ** = P < 0.01. Elements without stars means no significant differences (P > 0.05).
Correlation heat plot showing the correlation (r) of metal concentrations in the leaves (A), soil (B), and between metals in leaves and soil (C).
The average metal stocks in 30 cm thick-soils of eight and five out of the 13 heavy metals analyzed were significantly different among sites, with Petro Rabigh supporting higher concentration of most metals than Economic City, Khor Alkarar, and Thuwal Island (Table 3, Tukey HSD post-hoc test, P < 0.05). Specifically, Al, Cd, Fe, Mn, and V stocks in 30-cm thick-soils were significantly higher in Petro Rabigh than in the other locations, and Sr concentration was higher in Thuwal Island compared to the rest of locations. The concentration of other metals (i.e., As, Mo, Cr, Ni, Cu, Zn, and Pb) did not differ significantly among locations (Figure 5, Tukey HSD post-hoc test, P < 0.05). Two groups of metals were positively correlated among themselves in the soil: the first group included Al, Fe, Mn, Cd, and As, and the second group included Cr, Cu, Ni, Zn, and Mo (Figure 4B, Table S7). Even though metal concentrations in leaves and soils were not correlated (Figure 4C, Table S8), the BCF of most metals in the leaves was low, with leaf concentration half of the soil concentration, except for V and Pb, where the concentration in leaves doubled and quadrupled the concentration in soils, respectively (Figure 6).
Mean ± SE of metal concentrations (mg DW Kg−1) and accumulated stock (g m−2) in the top 30 cm of the soil from four different locations in the Central Red Sea, and the results from ANOVA Tukey HSD post-hoc tests for differences among locations.
Location
Khor alkharar
Economic city
Petro rabigh
Thuwal Island
Average
F ratio
(N = 6)
(N = 8)
(N = 4)
(N = 8)
(N = 26)
(Location)
Soil metal concentration (mg DW Kg−1)
Al
2477.09 ± 670.37a
4561.38 ± 709.49a
7262.55 ± 929.80a
2111.72 ± 347.83a
3742.22 ± 471.71
10.7**
As
7.03 ± 1.06ab
9.93 ± 0.76a
7.49 ± 1.06ab
5.56 ± 0.37b
7.54 ± 0.50
6.6**
Cd
0.24 ± 0.04b
0.36 ± 0.04b
0.56 ± 0.06a
0.27 ± 0.02b
0.34 ± 0.03
12**
Cr
22.81 ± 7.65a
28.79 ± 14a
62.11 ± 42.51a
68.52 ± 61.45a
44.76 ± 19.87
0.3ns
Cu
3.55 ± 0.89a
6.77 ± 1.67a
13.13 ± 5.04a
8.49 ± 6.11a
7.53 ± 2.08
0.6ns
Fe
3053.39 ± 532.74bc
5682.10 ± 820.21b
10501.47 ± 1629.09a
2740.84 ± 382.64c
4911.91 ± 649.72
16**
Mn
45.47 ± 6.92c
100.85 ± 15.02b
183.43 ± 10.26a
43.37 ± 7.15c
83.09 ± 11.24
25.7**
Mo
5.80 ± 1.56a
5.18 ± 0.74a
1.82 ± 0.61a
2.53 ± 0.71a
3.99 ± 0.56
3.5*
Ni
10.90 ± 2.74a
15.38 ± 5.16a
31.74 ± 15.34a
25.85 ± 21.01a
20.08 ± 6.88
0.4ns
Pb
1.06 ± 0.17a
1.84 ± 0.22a
2.52 ± 0.31a
1.93 ± 0.74a
1.79 ± 0.25
1.1ns
Sr
3881.66 ± 313.97ab
3353.72 ± 125.46b
3331.76 ± 763.43ab
4561.03 ± 321.31a
3843.66 ± 190.98
3.1*
V
6.59 ± 1.89bc
9.20 ± 1.58ab
16.19 ± 3.35a
3.04 ± 0.59c
7.78 ± 1.17
8.9**
Zn
12.22 ± 1.36a
15.45 ± 1.84a
35.56 ± 6.02a
23.21 ± 11.24a
20.19 ± 3.79
1.4ns
Soil metal stock (g DW m−2)
Al
469.81 ± 60.93b
979.40 ± 225.34ab
1587.80 ± 316.85a
450.04 ± 71.53b
792.52 ± 116.48
7.2**
As
1.23 ± 0.39a
1.94 ± 0.32a
1.97 ± 0.59a
1.14 ± 0.16a
1.53 ± 0.17
1.8ns
Cd
0.04 ± 0.01b
0.07 ± 0.01ab
0.12 ± 0.03a
0.06 ± 0.01b
0.07 ± 0.01
5**
Cr
14.88 ± 12.36a
4.80 ± 1.17a
6.51 ± 2.94a
6.26 ± 3.46a
7.84 ± 3
0.5ns
Cu
1.99 ± 1.53a
1.28 ± 0.25a
1.88 ± 0.55a
1.03 ± 0.40a
1.46 ± 0.37
0.3ns
Fe
581.86 ± 121.98b
1184.91 ± 250.26b
2230.68 ± 391.20a
574.52 ± 88.73b
1018.82 ± 152.17
10.4**
Mn
9.48 ± 2.24b
21.34 ± 4.65b
38.91 ± 6.44a
8.34 ± 1.32b
17.31 ± 2.76
11.2**
Mo
0.93 ± 0.38a
0.86 ± 0.2a
0.32 ± 0.1a
0.41 ± 0.09a
0.66 ± 0.12
1.7ns
Ni
5.90 ± 4.52a
2.83 ± 0.56a
4.25 ± 1.38a
2.64 ± 1.23a
3.70 ± 1.1
0.5ns
Pb
0.35 ± 0.14a
0.41 ± 0.06a
0.55 ± 0.13a
0.37 ± 0.14a
0.40 ± 0.06
0.4ns
Sr
825.77 ± 300.01a
673.55 ± 104.66a
775.60 ± 295.20a
1008.25 ± 170.95a
827.36 ± 99.67a
0.5ns
V
1.01 ± 0.18b
1.92 ± 0.47b
3.76 ± 0.67a
0.72 ± 0.14b
1.62 ± 0.27
10.5**
Zn
4.36 ± 2.21a
3.33 ± 0.66a
5.86 ± 0.78a
3.72 ± 1.26a
4.08 ± 0.66
0.5ns
= 0.05 > P > 0.01;
= P < 0.01;
ns = P > 0.05.
Locations sharing the same superscript letters do not differ among themselves for a particular element. N, number of cores.
Vertical profiles of metal concentrations (mg DW kg−1) along soil depth (cm decompressed) in mangroves from central Red Sea.
Bioaccumulation factor (BCF), representing the ratio of the average metal concentrations in the leaf to soil, combining all four locations (Mean ± SE).
Discussion
The observed concentrations of heavy metals in the leaves and soils of A. marina in the Central Red Sea are generally in the lower range of values found in different mangrove species and environments observed around the planet (Agoramoorthy et al., 2008; Lai et al., 2010; Usman et al., 2013; Chaudhuri et al., 2014), Tables S9,S10, but similar to concentrations of Cr, Ni, Pb, Cd, and Cu reported for A. marina in other locations in the Red Sea (Alzahrani et al., 2018). Thus, suggesting that mangroves in the central Red Sea area are not under severe heavy metal pollution.
Whereas, previous studies reported similar or higher metal concentrations in mangrove roots and shoots compared to those in soils (Alongi et al., 2003; MacFarlane et al., 2003, 2007; Kaewtubtim et al., 2018; Kulkarni et al., 2018), However, in our study, we found heavy metals concentrations in the soil to be significantly higher than the leaves, in particular, we found that some of the metals (i.e., Al, Cd, Fe, Mn, and V) were significantly higher along the 30-cm soil profile in Petro Rabigh, which could be due to industruial activities compared to the rest of locations. However, metal profiles in soils reveal significant fluctionations of metals inputs over time (Figure 5).
The role of leaf shedding as a source of metals to the environment should be taken into consideration when assessing the potential of mangroves as phytoremediation tools (Figure 7). Here we estimated that the metal remobilization with leaf shedding (i.e., transfer of deep-soil metal stocks into the soil surface) by mangroves in the Red Sea (occupying ~135 km2; Almahasheer et al., 2016a totaled 120 tons of Fe, 91 tons of Al, 16 tons of Mn, and Sr, 6 tons of V, 3 tons of Zn, 2 tons of Pb, 0.7 tons of As, 0.5 tons of Mo, 0.4 tons of Cu and Ni, 0.3 tons of Cr, and 0.05 tons of Cd. These preliminary estimates show that mangroves could act as important sources of metals, particularly Fe, to the Red Sea. Moreover, mangrove leaves in our Red Sea study sites cannot be considered as hyper-accumulators, since metals did not exceed 1% of the dried plant material (Baker and Brooks, 1989; Reeves et al., 2018), nor the concentrations of metals in above-ground parts exceeded their concentration in the soil (Baker, 1981). Further, our study relating the concentration of metals to leave age indicates that for most metals content increases with leaf growth (Figure 2), showing no evidence of reabsorption before shedding. This implies that mangroves remobilize heavy metals that were stored deep in the soil by up taking them through their root system and bringing them back to the surface of the soil through leaves shedding.
Average flux of heavy metals input (g m−2 y−1) into surface soils from senescent leaves in Central Red Sea mangroves.
Yet, three metals presented a different behavior. Cu concentration in leaves decreased with age, suggesting that A. marina reabsorbs about 51 ± 16% of the Cu present in leaves before these are shed, potentially accumulating Cu in their above ground biomass as trees grow (Usman et al., 2013; Almahasheer, 2016). A similar effect for Cu concentrations has been observed in other mangrove species were concentrations were higher in young leaves than in mature leaves (Saenger and McConchie, 2004; Pinheiro et al., 2012). In plants, Cu is essential in various metabolic processes from photosynthesis to lignin synthesis, but at high concentrations it can be toxic and it is, therefore, under tight regulation (Pilon et al., 2006). The fact that Cu in mangrove leaves is being reabsorbed before leaves are shed suggests that it might be a limiting chemical element for the growth of mangroves in the Central Red Sea, as supported by the low leaf concentration values (3 ± 1 mg Kg−1) found at our study locations compared to those reported elsewhere e.g., 356 mg Kg−1 in Farasan Islands, (Usman et al., 2013) and 10–20 mg Kg−1 in Sydney, Australia (Nath et al., 2014; Birch et al., 2015). On the contrary, V, Cd, and As concentrations in the leaves increased with leaf age. Whether V is essential for plants is under debate, there is evidence that it has deleterious effects at high concentrations (Imtiaz et al., 2015). Both Cd and As are considered non-essential metals with toxic effects even at low concentrations (Finnegan and Chen, 2012; Gallego et al., 2012). The increasing concentration of both metals with leaf age suggests that A. marina has the capacity to detoxify itself by transferring these two elements to leaves, which will be shed, and therefore, A. marina could be considered as excluders for these two elements (Figure 2).
Conclusions
We demonstrate that mangroves remobilize metals buried deep in the soil into the environment by shedding the senescing leaves into the surface soil, which could either enter in food chains via leaf consumption or act as an important source of metals to the adjacent ecosystems depending on biogeochemical conditions and processes. Therefore, when used as phytoremediators, the role of mangroves as heavy metal sinks through retention in the woody parts has to be evaluated taking into account the remobilization through leaves shedding.
Author Contributions
HA, CD, and XI designed the study. HA and OS carried out the field and lab measurements. All authors contributed to data analysis and writing of the manuscript.
Conflict of Interest Statement
The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.
We thank the Costal and Marine Resources core lab for their help during the field work, as well Vijayalaxmi Dasari for soil analyses.
Supplementary Material
The Supplementary Material for this article can be found online at: https://www.frontiersin.org/articles/10.3389/fmars.2018.00484/full#supplementary-material
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Funding. This research was supported by King Abdullah University of Science and Technology. OS was supported by an ARC DECRA (DE170101524).