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Lupus nephritis pathology prediction with clinical indices

机译:狼疮性肾炎的病理学预测与临床指标

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摘要

Effective treatment of lupus nephritis and assessment of patient prognosis depend on accurate pathological classification and careful use of acute and chronic pathological indices. Renal biopsy can provide most reliable predicting power. However, clinicians still need auxiliary tools under certain circumstances. Comprehensive statistical analysis of clinical indices may be an effective support and supplementation for biopsy. In this study, 173 patients with lupus nephritis were classified based on histology and scored on acute and chronic indices. These results were compared against machine learning predictions involving multilinear regression and random forest analysis. For three class random forest analysis, total classification accuracy was 51.3% (class II 53.7%, class III&IV 56.2%, class V 40.1%). For two class random forest analysis, class II accuracy reached 56.2%; class III&IV 63.7%; class V 61%. Additionally, machine learning selected out corresponding important variables for each class prediction. Multiple linear regression predicted the index of chronic pathology (CI) (Q2 = 0.746, R2 = 0.771) and the acute index (AI) (Q2 = 0.516, R2 = 0.576), and each variable’s importance was calculated in AI and CI models. Evaluation of lupus nephritis by machine learning showed potential for assessment of lupus nephritis.
机译:狼疮性肾炎的有效治疗和患者预后的评估取决于准确的病理分类和谨慎使用急,慢性病理指标。肾活检可以提供最可靠的预测能力。但是,在某些情况下,临床医生仍需要辅助工具。临床指标的全面统计分析可能是活检的有效支持和补充。在这项研究中,根据组织学对173例狼疮性肾炎患者进行了分类,并根据急性和慢性指数对其进行了评分。将这些结果与涉及多线性回归和随机森林分析的机器学习预测进行了比较。对于三级随机森林分析,总分类准确度为51.3%(II级53.7%,III&IV级56.2%,V级40.1%)。对于两级随机森林分析,II级准确度达到56.2%; III&IV级63.7%; V级61%。此外,机器学习为每个类别预测选择了相应的重要变量。多元线性回归预测慢性病理指数(CI)(Q 2 = 0.746,R 2 = 0.771)和急性指数(AI)(Q 2 = 0.516,R 2 = 0.576),并且在AI和CI模型中计算了每个变量的重要性。通过机器学习评估狼疮肾炎显示出评估狼疮肾炎的潜力。

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