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生成结合分子测量和机器学习分类器集合的自动肾移植活检报告。

Generating automated kidney transplant biopsy reports combining molecular measurements with ensembles of machine learning classifiers.

机构信息

Alberta Transplant Applied Genomics Centre, Alberta, Canada.

Department of Laboratory Medicine and Pathology, University of Alberta, Edmonton, Alberta, Canada.

出版信息

Am J Transplant. 2019 Oct;19(10):2719-2731. doi: 10.1111/ajt.15351. Epub 2019 Apr 10.

Abstract

We previously reported a system for assessing rejection in kidney transplant biopsies using microarray-based gene expression data, the Molecular Microscope Diagnostic System (MMDx). The present study was designed to optimize the accuracy and stability of MMDx diagnoses by replacing single machine learning classifiers with ensembles of diverse classifier methods. We also examined the use of automated report sign-outs and the agreement between multiple human interpreters of the molecular results. Ensembles generated diagnoses that were both more accurate than the best individual classifiers, and nearly as stable as the best, consistent with expectations from the machine learning literature. Human experts had ≈93% agreement (balanced accuracy) signing out the reports, and random forest-based automated sign-outs showed similar levels of agreement with the human experts (92% and 94% for predicting the expert MMDx sign-outs for T cell-mediated (TCMR) and antibody-mediated rejection (ABMR), respectively). In most cases disagreements, whether between experts or between experts and automated sign-outs, were in biopsies near diagnostic thresholds. Considerable disagreement with histology persisted. The balanced accuracies of MMDx sign-outs for histology diagnoses of TCMR and ABMR were 73% and 78%, respectively. Disagreement with histology is largely due to the known noise in histology assessments (ClinicalTrials.gov NCT01299168).

摘要

我们之前报道了一种使用基于微阵列的基因表达数据评估肾移植活检排斥反应的系统,即分子显微镜诊断系统 (MMDx)。本研究旨在通过用多种分类器方法的集成替代单个机器学习分类器来优化 MMDx 诊断的准确性和稳定性。我们还研究了自动报告签发的使用情况以及多个分子结果解释者之间的一致性。集成生成的诊断结果既比最佳的单个分类器更准确,又与最佳的分类器几乎一样稳定,这与机器学习文献中的预期一致。人类专家的报告签发一致性约为 93%(平衡准确率),基于随机森林的自动签发与人类专家的水平相当(分别预测 T 细胞介导排斥 (TCMR) 和抗体介导排斥 (ABMR) 的专家 MMDx 签发,准确率为 92%和 94%)。在大多数情况下,无论是专家之间还是专家与自动签发之间的分歧,都发生在接近诊断阈值的活检中。与组织学的一致性仍然存在很大的分歧。MMDx 对 TCMR 和 ABMR 组织学诊断的签发准确率分别为 73%和 78%。与组织学的分歧主要是由于组织学评估中的已知噪声(ClinicalTrials.gov NCT01299168)。

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