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人工智能在柔性支气管镜检查快速现场评估中的应用。

The application of artificial intelligence for Rapid On-Site Evaluation during flexible bronchoscopy.

作者信息

Yan Shuang, Li Yongfei, Pan Lei, Jiang Hua, Gong Li, Jin Faguang

机构信息

Department of Pulmonary and Critical Care Medicine, Tangdu Hospital, Air Force Medical University, Xi'an, China.

Xi'an High-tech Institute, Xi'an, China.

出版信息

Front Oncol. 2024 Mar 11;14:1360831. doi: 10.3389/fonc.2024.1360831. eCollection 2024.

Abstract

BACKGROUND

Rapid On-Site Evaluation (ROSE) during flexible bronchoscopy (FB) can improve the adequacy of biopsy specimens and diagnostic yield of lung cancer. However, the lack of cytopathologists has restricted the wide use of ROSE.

OBJECTIVE

To develop a ROSE artificial intelligence (AI) system using deep learning techniques to differentiate malignant from benign lesions based on ROSE cytological images, and evaluate the clinical performance of the ROSE AI system.

METHOD

6357 ROSE cytological images from 721 patients who underwent transbronchial biopsy were collected from January to July 2023 at the Tangdu Hospital, Air Force Medical University. A ROSE AI system, composed of a deep convolutional neural network (DCNN), was developed to identify whether there were malignant cells in the ROSE cytological images. Internal testing, external testing, and human-machine competition were used to evaluate the performance of the system.

RESULTS

The ROSE AI system identified images containing lung malignant cells with the accuracy of 92.97% and 90.26% on the internal testing dataset and external testing dataset respectively, and its performance was comparable to that of the experienced cytopathologist. The ROSE AI system also showed promising performance in diagnosing lung cancer based on ROSE cytological images, with accuracy of 89.61% and 87.59%, and sensitivity of 90.57% and 94.90% on the internal testing dataset and external testing dataset respectively. More specifically, the agreement between the ROSE AI system and the experienced cytopathologist in diagnosing common types of lung cancer, including squamous cell carcinoma, adenocarcinoma, and small cell lung cancer, demonstrated almost perfect consistency in both the internal testing dataset (κ) and the external testing dataset (κ).

CONCLUSIONS

The ROSE AI system demonstrated feasibility and robustness in identifying specimen adequacy, showing potential enhancement in the diagnostic yield of FB. Nevertheless, additional enhancements, incorporating a more diverse range of training data and leveraging advanced AI models with increased capabilities, along with rigorous validation through extensive multi-center randomized control assays, are crucial to guarantee the seamless and effective integration of this technology into clinical practice.

摘要

背景

在可弯曲支气管镜检查(FB)期间进行快速现场评估(ROSE)可提高活检标本的充足率和肺癌的诊断率。然而,细胞病理学家的短缺限制了ROSE的广泛应用。

目的

利用深度学习技术开发一种ROSE人工智能(AI)系统,基于ROSE细胞学图像鉴别恶性病变与良性病变,并评估ROSE AI系统的临床性能。

方法

2023年1月至7月在空军军医大学唐都医院收集了721例行经支气管活检患者的6357张ROSE细胞学图像。开发了一种由深度卷积神经网络(DCNN)组成的ROSE AI系统,以识别ROSE细胞学图像中是否存在恶性细胞。采用内部测试、外部测试和人机竞赛来评估该系统的性能。

结果

ROSE AI系统在内部测试数据集和外部测试数据集上识别含有肺恶性细胞图像的准确率分别为92.97%和90.26%,其性能与经验丰富的细胞病理学家相当。ROSE AI系统基于ROSE细胞学图像诊断肺癌也表现出良好的性能,在内部测试数据集和外部测试数据集上的准确率分别为89.

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a9c6/10961380/0b50b8f380f5/fonc-14-1360831-g001.jpg

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