基于机器学习的模型有助于区分鸟分枝杆菌复杂肺部疾病和肺结核:一项多中心研究。

Jiacheng Zhang, Tingting Huang, Xu He, Dingsheng Han, Qian Xu, Fukun Shi, Lan Zhang, Dailun Hou
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引用次数: 0

摘要

在全球范围内,鸟分枝杆菌-细胞内复杂性肺病患者的数量正在增加。鸟分枝杆菌-细胞内复合体肺部疾病与肺结核因其相似的表现和特征而难以区分。我们的目标是建立并验证一个机器学习模型,使用临床数据和计算机断层扫描特征来区分它们。这项多中心回顾性研究纳入了迄今为止诊断为鸟分枝杆菌胞内复合体和肺结核的169例患者。对数据进行分析,建立并验证了逻辑回归、随机森林和支持向量机模型。使用接收器工作特性和精确召回曲线对性能进行评估。总共分析了84例鸟分枝杆菌-细胞内复合体肺部疾病和85例肺结核。鸟分枝杆菌-细胞内复合体肺部疾病患者年龄较大。咯血率、腔数及形态、支气管扩张类型及分布有差异。支持向量机模型表现较好。在训练集中,曲线下面积为0.960,在验证集中,曲线下面积为0.885。结果表明,支持向量机模型的准确率较高,召回率较低。基于支持向量机器学习的模型整合了临床数据和计算机断层扫描成像特征,表现出出色的诊断性能,可以帮助区分鸟分枝杆菌-细胞内复杂肺部疾病和肺结核。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning-based model assists in differentiating Mycobacterium avium Complex Pulmonary Disease from Pulmonary Tuberculosis: A Multicenter Study.

The number of Mycobacterium avium-intracellulare complex pulmonary disease patients is increasing globally. Distinguishing Mycobacterium avium-intracellulare complex pulmonary disease from pulmonary tuberculosis is difficult due to similar manifestations and characteristics. We aimed to build and validate a machine learning model using clinical data and computed tomography features to differentiate them. This multi-centered, retrospective study included 169 patients diagnosed with Mycobacterium avium-intracellulare complex and pulmonary tuberculosis from date to date. Data were analyzed, and logistic regression, random forest, and support vector machine models were established and validated. Performance was evaluated using receiver operating characteristic and precision-recall curves. In total, 84 patients with Mycobacterium avium-intracellulare complex pulmonary disease and 85 with pulmonary tuberculosis were analyzed. Patients with Mycobacterium avium-intracellulare complex pulmonary disease were older. Hemoptysis rate, cavity number and morphology, bronchiectasis type, and distribution differed. The support vector machine model performed better. In the training set, the area under the curve was 0.960, and in the validation set it was 0.885. The precision-recall curve showed high accuracy and low recall for the support vector machine model. The support vector machine learning-based model, which integrates clinical data and computed tomography imaging features, exhibited excellent diagnostic performance and can assist in differentiating Mycobacterium avium-intracellulare complex pulmonary disease from pulmonary tuberculosis.

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