医学
胸腔积液
恶性胸腔积液
克拉斯
靶向治疗
曲线下面积
放射科
渗出
癌症
病理
内科学
肿瘤科
结直肠癌
外科
作者
Wenhao Ren,Yanli Zhu,Qian Wang,Hai-zhu Jin,Yi-yi Guo,Dongmei Lin
出处
期刊:Cancers
[MDPI AG]
日期:2023-01-25
卷期号:15 (3): 752-752
被引量:6
标识
DOI:10.3390/cancers15030752
摘要
Cytopathological examination is one of the main examinations for pleural effusion, and especially for many patients with advanced cancer, pleural effusion is the only accessible specimen for establishing a pathological diagnosis. The lack of cytopathologists and the high cost of gene detection present opportunities for the application of deep learning. In this retrospective analysis, data representing 1321 consecutive cases of pleural effusion were collected. We trained and evaluated our deep learning model based on several tasks, including the diagnosis of benign and malignant pleural effusion, the identification of the primary location of common metastatic cancer from pleural effusion, and the prediction of genetic alterations associated with targeted therapy. We achieved good results in identifying benign and malignant pleural effusions (0.932 AUC (area under the ROC curve)) and the primary location of common metastatic cancer (0.910 AUC). In addition, we analyzed ten genes related to targeted therapy in specimens and used them to train the model regarding four alteration statuses, which also yielded reasonable results (0.869 AUC for ALK fusion, 0.804 AUC for KRAS mutation, 0.644 AUC for EGFR mutation and 0.774 AUC for NONE alteration). Our research shows the feasibility and benefits of deep learning to assist in cytopathological diagnosis in clinical settings.
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