{"title":"利用网络分析确定土地退化的土壤质量指标","authors":"Ming Gao, Wei Hu, Xingyi Zhang, Meng Li","doi":"10.1007/s11104-024-06896-0","DOIUrl":null,"url":null,"abstract":"<h3 data-test=\"abstract-sub-heading\">Background and aims</h3><p>Land degradation poses a serious threat to soil quality health. Our study aimed to assess soil quality more effectively by establishing a valid and accurate soil quality index (SQI) for four land degraded levels in northeast China.</p><h3 data-test=\"abstract-sub-heading\">Methods</h3><p>The minimum data set (MDS) and different scoring techniques (linear and nonlinear scoring) were selected through network analysis (NA) and principal component analysis (PCA). As potential SQI indicators, 11 physical, 12 chemical and 6 biological indicators were measured at 0 – 20 cm depth.</p><h3 data-test=\"abstract-sub-heading\">Results</h3><p>Our results showed that the soil properties were degraded and SQI decreased significantly with increasing land degradation. In addition, maize yield was positively related to SQI. The number of MDS generated by NA was much lower than that generated by PCA but increased the contributions of the indicators. For validating the accuracy and sensitivity of SQI, we found SQI-NA had greater correlations with maize yields and higher sensitivity indexes than SQI-PCA, implying that NA performs better in terms of accuracy and sensitivity to variation in soil quality under land degradation. So NA not only screens fewer metrics but also is more efficient in differentiating among SQIs. In addition, the SQIs calculated using the nonlinear integral through NA (NA-NL) had larger sensitivity index and F values than the other SQIs and were thus better able to discriminate under land degradation.</p><h3 data-test=\"abstract-sub-heading\">Conclusion</h3><p>We conclude that NA-NL was recommended as a sensitive and effective approach for assessing SQIs at different land degradation levels.</p>","PeriodicalId":20223,"journal":{"name":"Plant and Soil","volume":null,"pages":null},"PeriodicalIF":3.9000,"publicationDate":"2024-08-17","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Using network analysis to determine the soil quality indexes for land degradation\",\"authors\":\"Ming Gao, Wei Hu, Xingyi Zhang, Meng Li\",\"doi\":\"10.1007/s11104-024-06896-0\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<h3 data-test=\\\"abstract-sub-heading\\\">Background and aims</h3><p>Land degradation poses a serious threat to soil quality health. 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引用次数: 0
摘要
背景与目的土地退化严重威胁着土壤质量健康。方法通过网络分析(NA)和主成分分析(PCA),选择最小数据集(MDS)和不同的评分技术(线性评分和非线性评分)作为潜在的 SQI 指标。结果表明,随着土地退化程度的加剧,土壤性质发生退化,土壤质量指数(SQI)显著下降。此外,玉米产量与 SQI 呈正相关。NA 生成的 MDS 数量远低于 PCA 生成的 MDS 数量,但提高了指标的贡献率。为了验证 SQI 的准确性和灵敏度,我们发现与 SQI-PCA 相比,SQI-NA 与玉米产量的相关性更大,灵敏度指数更高,这意味着 NA 在准确性和对土地退化下土壤质量变化的灵敏度方面表现更好。因此,NA 不仅筛选的指标更少,而且在区分 SQI 方面也更有效。此外,通过 NA 非线性积分(NA-NL)计算出的 SQIs 的灵敏度指数和 F 值均大于其他 SQIs,因此能更好地区分土地退化情况。
Using network analysis to determine the soil quality indexes for land degradation
Background and aims
Land degradation poses a serious threat to soil quality health. Our study aimed to assess soil quality more effectively by establishing a valid and accurate soil quality index (SQI) for four land degraded levels in northeast China.
Methods
The minimum data set (MDS) and different scoring techniques (linear and nonlinear scoring) were selected through network analysis (NA) and principal component analysis (PCA). As potential SQI indicators, 11 physical, 12 chemical and 6 biological indicators were measured at 0 – 20 cm depth.
Results
Our results showed that the soil properties were degraded and SQI decreased significantly with increasing land degradation. In addition, maize yield was positively related to SQI. The number of MDS generated by NA was much lower than that generated by PCA but increased the contributions of the indicators. For validating the accuracy and sensitivity of SQI, we found SQI-NA had greater correlations with maize yields and higher sensitivity indexes than SQI-PCA, implying that NA performs better in terms of accuracy and sensitivity to variation in soil quality under land degradation. So NA not only screens fewer metrics but also is more efficient in differentiating among SQIs. In addition, the SQIs calculated using the nonlinear integral through NA (NA-NL) had larger sensitivity index and F values than the other SQIs and were thus better able to discriminate under land degradation.
Conclusion
We conclude that NA-NL was recommended as a sensitive and effective approach for assessing SQIs at different land degradation levels.
期刊介绍:
Plant and Soil publishes original papers and review articles exploring the interface of plant biology and soil sciences, and that enhance our mechanistic understanding of plant-soil interactions. We focus on the interface of plant biology and soil sciences, and seek those manuscripts with a strong mechanistic component which develop and test hypotheses aimed at understanding underlying mechanisms of plant-soil interactions. Manuscripts can include both fundamental and applied aspects of mineral nutrition, plant water relations, symbiotic and pathogenic plant-microbe interactions, root anatomy and morphology, soil biology, ecology, agrochemistry and agrophysics, as long as they are hypothesis-driven and enhance our mechanistic understanding. Articles including a major molecular or modelling component also fall within the scope of the journal. All contributions appear in the English language, with consistent spelling, using either American or British English.