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机器学习算法可识别抗 TIF1γ+肌炎的临床亚型和癌症:87 例患者的纵向研究。

Machine Learning Algorithms Identify Clinical Subtypes and Cancer in Anti-TIF1γ+ Myositis: A Longitudinal Study of 87 Patients.

机构信息

Department of Rheumatology, Xiangya Hospital of Central South University, Changsha, China.

National Clinical Research Center for Geriatric Disorders, Xiangya Hospital of Central South University, Changsha, China.

出版信息

Front Immunol. 2022 Feb 14;13:802499. doi: 10.3389/fimmu.2022.802499. eCollection 2022.

Abstract

BACKGROUND

Anti-TIF1γ antibodies are a class of myositis-specific antibodies (MSAs) and are closely associated with adult cancer-associated myositis (CAM). The heterogeneity in anti-TIF1γ+ myositis is poorly explored, and whether anti-TIF1γ+ patients will develop cancer or not is unknown at their first diagnosis. Here, we aimed to explore the subtypes of anti-TIF1γ+ myositis and construct machine learning classifiers to predict cancer in anti-TIF1γ+ patients based on clinical features.

METHODS

A cohort of 87 anti-TIF1γ+ patients were enrolled and followed up in Xiangya Hospital from June 2017 to June 2021. Sankey diagrams indicating temporal relationships between anti-TIF1γ+ myositis and cancer were plotted. Elastic net and random forest were used to select and rank the most important variables. Multidimensional scaling (MDS) plot and hierarchical cluster analysis were performed to identify subtypes of anti-TIF1γ+ myositis. The clinical characteristics were compared among subtypes of anti-TIF1γ+ patients. Machine learning classifiers were constructed to predict cancer in anti-TIF1γ+ myositis, the accuracy of which was evaluated by receiver operating characteristic (ROC) curves.

RESULTS

Forty-seven (54.0%) anti-TIF1γ+ patients had cancer, 78.7% of which were diagnosed within 0.5 years of the myositis diagnosis. Fourteen variables contributing most to distinguishing cancer and non-cancer were selected and used for the calculation of the similarities (proximities) of samples and the construction of machine learning classifiers. The top 10 were disease duration, percentage of lymphocytes (L%), percentage of neutrophils (N%), neutrophil-to-lymphocyte ratio (NLR), sex, C-reactive protein (CRP), shawl sign, arthritis/arthralgia, V-neck sign, and anti-PM-Scl75 antibodies. Anti-TIF1γ+ myositis patients can be clearly separated into three clinical subtypes, which correspond to patients with low, intermediate, and high cancer risk, respectively. Machine learning classifiers [random forest, support vector machines (SVM), extreme gradient boosting (XGBoost), elastic net, and decision tree] had good predictions for cancer in anti-TIF1γ+ myositis patients. In particular, the prediction accuracy of random forest was >90%, and decision tree highlighted disease duration, NLR, and CRP as critical clinical parameters for recognizing cancer patients.

CONCLUSION

Anti-TIF1γ+ myositis can be separated into three distinct subtypes with low, intermediate, and high risk of cancer. Machine learning classifiers constructed with clinical characteristics have favorable performance in predicting cancer in anti-TIF1γ+ myositis, which can help physicians in choosing appropriate cancer screening programs.

摘要

背景

抗 TIF1γ 抗体是一类肌炎特异性抗体(MSAs),与成人癌症相关肌炎(CAM)密切相关。抗 TIF1γ+肌炎的异质性尚未得到充分探索,并且在首次诊断时,抗 TIF1γ+患者是否会发展为癌症尚不清楚。在这里,我们旨在探讨抗 TIF1γ+肌炎的亚型,并构建机器学习分类器,根据临床特征预测抗 TIF1γ+患者的癌症。

方法

我们招募了 87 名抗 TIF1γ+患者,并于 2017 年 6 月至 2021 年 6 月在湘雅医院进行了随访。绘制了抗 TIF1γ+肌炎与癌症之间时间关系的桑基图。弹性网络和随机森林用于选择和排序最重要的变量。多维尺度(MDS)图和层次聚类分析用于识别抗 TIF1γ+肌炎的亚型。比较了抗 TIF1γ+患者亚型之间的临床特征。构建了机器学习分类器来预测抗 TIF1γ+肌炎中的癌症,通过接收者操作特征(ROC)曲线评估其准确性。

结果

47(54.0%)名抗 TIF1γ+患者患有癌症,其中 78.7%在肌炎诊断后 0.5 年内被诊断出。选择了对区分癌症和非癌症最有贡献的 14 个变量,并用于计算样本的相似度(接近度)和机器学习分类器的构建。排名前 10 的变量是疾病持续时间、淋巴细胞百分比(L%)、中性粒细胞百分比(N%)、中性粒细胞与淋巴细胞比值(NLR)、性别、C-反应蛋白(CRP)、披肩征、关节炎/关节痛、V 型颈征和抗 PM-Scl75 抗体。抗 TIF1γ+肌炎患者可以清楚地分为三种临床亚型,分别对应于低、中、高癌症风险的患者。机器学习分类器[随机森林、支持向量机(SVM)、极端梯度提升(XGBoost)、弹性网络和决策树]对抗 TIF1γ+肌炎患者的癌症具有良好的预测能力。特别是,随机森林的预测准确率>90%,决策树突出了疾病持续时间、NLR 和 CRP 作为识别癌症患者的关键临床参数。

结论

抗 TIF1γ+肌炎可分为低、中、高癌症风险的三个不同亚型。使用临床特征构建的机器学习分类器在预测抗 TIF1γ+肌炎中的癌症方面具有良好的性能,这有助于医生选择合适的癌症筛查方案。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/528a/8883045/3584f0812aa7/fimmu-13-802499-g001.jpg

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