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用于呼吸道细胞学快速现场诊断的增强型ResNet-18分类模型评估

Evaluation of an enhanced ResNet-18 classification model for rapid On-site diagnosis in respiratory cytology.

作者信息

Gong Wei, Vaishnani Deep K, Jin Xuan-Chen, Zeng Jing, Chen Wei, Huang Huixia, Zhou Yu-Qing, Hla Khaing Wut Yi, Geng Chen, Ma Jun

机构信息

Department of Pathology, Lishui Municipal Central Hospital, Lishui, 323000, Zhejiang Province, China.

School of International Studies, Wenzhou Medical University, Ouhai District, Chashan, Wenzhou, 325035, Zhejiang Province, China.

出版信息

BMC Cancer. 2025 Jan 3;25(1):10. doi: 10.1186/s12885-024-13402-3.

Abstract

OBJECTIVE

Rapid on-site evaluation (ROSE) of respiratory cytology specimens is a critical technique for accurate and timely diagnosis of lung cancer. However, in China, limited familiarity with the Diff-Quik staining method and a shortage of trained cytopathologists hamper utilization of ROSE. Therefore, developing an improved deep learning model to assist clinicians in promptly and accurately evaluating Diff-Quik stained cytology samples during ROSE has important clinical value.

METHODS

Retrospectively, 116 digital images of Diff-Quik stained cytology samples were obtained from whole slide scans. These included 6 diagnostic categories - carcinoid, normal cells, adenocarcinoma, squamous cell carcinoma, non-small cell carcinoma, and small cell carcinoma. All malignant diagnoses were confirmed by histopathology and immunohistochemistry. The test image set was presented to 3 cytopathologists from different hospitals with varying levels of experience, as well as an artificial intelligence system, as single-choice questions.

RESULTS

The diagnostic accuracy of the cytopathologists correlated with their years of practice and hospital setting. The AI model demonstrated proficiency comparable to the humans. Importantly, all combinations of AI assistance and human cytopathologist increased diagnostic efficiency to varying degrees.

CONCLUSIONS

This deep learning model shows promising capability as an aid for on-site diagnosis of respiratory cytology samples. However, human expertise remains essential to the diagnostic process.

摘要

目的

呼吸道细胞学标本的快速现场评估(ROSE)是准确、及时诊断肺癌的一项关键技术。然而,在中国,对Diff-Quik染色方法的熟悉程度有限以及训练有素的细胞病理学家短缺,阻碍了ROSE的应用。因此,开发一种改进的深度学习模型,以协助临床医生在ROSE过程中迅速、准确地评估Diff-Quik染色的细胞学样本,具有重要的临床价值。

方法

回顾性地从全玻片扫描中获取了116张Diff-Quik染色细胞学样本的数字图像。这些样本包括6种诊断类别——类癌、正常细胞、腺癌、鳞状细胞癌、非小细胞癌和小细胞癌。所有恶性诊断均通过组织病理学和免疫组织化学得到证实。将测试图像集以单项选择题的形式呈现给来自不同医院、经验水平各异的3位细胞病理学家以及一个人工智能系统。

结果

细胞病理学家的诊断准确性与其从业年限和医院环境相关。人工智能模型表现出与人类相当的水平。重要的是,人工智能辅助与人类细胞病理学家的所有组合都不同程度地提高了诊断效率。

结论

这种深度学习模型显示出作为呼吸道细胞学样本现场诊断辅助工具的良好潜力。然而,人类专业知识在诊断过程中仍然至关重要。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/dffe/11697834/3341fc5848e0/12885_2024_13402_Fig1_HTML.jpg

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