Deep learning-based fully automated diagnosis of melanocytic lesions by using whole slide images.

IF 2.9 4区 医学 Q2 DERMATOLOGY Journal of Dermatological Treatment Pub Date : 2022-08-01 Epub Date: 2022-02-10 DOI:10.1080/09546634.2022.2038772
Yongyang Bao, Jiayi Zhang, Xingyu Zhao, Henghua Zhou, Ying Chen, Junming Jian, Tianlei Shi, Xin Gao
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引用次数: 5

Abstract

Background: Erroneous diagnoses of melanocytic lesions (benign, atypical, and malignant types) result in inappropriate surgical treatment plans.

Objective: To propose a deep learning (DL)-based fully automated diagnostic method using whole slide images (WSIs) for melanocytic lesions.

Methods: The method consisted of patch prediction using a DL model and patient diagnosis using an aggregation module. The method was developed with 745 WSIs and evaluated using internal and external testing sets comprising 182 WSIs and 54 WSIs, respectively. The results were compared with those of the classification by one junior and two senior pathologists. Furthermore, we compared the performance of the three pathologists in the classification of melanocytic lesions with and without the assistance of our method.

Results: The method achieved an accuracy of 0.963 and 0.930 on the internal and external testing sets, respectively, which was significantly higher than that of the junior pathologist (0.419 and 0.535). With assistance from the method, all three pathologists achieved higher accuracy on the internal and external testing sets; the accuracy of the junior pathologist increased by 39.0% and 30.2%, respectively (p < .05).

Conclusion: This generalizable method can accurately classify melanocytic lesions and effectively improve the diagnostic accuracy of pathologists.

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基于深度学习的黑素细胞病变的全自动化诊断。
背景:黑素细胞病变(良性、非典型和恶性)的错误诊断导致不适当的手术治疗方案。目的:提出一种基于深度学习(DL)的全幻灯片图像(WSIs)全自动化诊断黑素细胞病变的方法。方法:采用深度学习模型进行斑块预测,采用聚合模块进行患者诊断。该方法由745个wsi开发,并分别使用包含182个wsi和54个wsi的内部和外部测试集进行评估。结果与1名初级病理学家和2名高级病理学家的分类结果进行比较。此外,我们比较了三个病理学家的表现在黑素细胞病变的分类与没有我们的方法的帮助。结果:该方法在内外测试集上的准确率分别为0.963和0.930,显著高于初级病理医师的准确率0.419和0.535。在该方法的帮助下,三位病理学家在内部和外部测试集上都取得了更高的准确性;结论:该泛化方法能准确地对黑素细胞病变进行分类,有效提高了病理医师的诊断准确率。
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来源期刊
CiteScore
6.50
自引率
0.00%
发文量
145
审稿时长
6-12 weeks
期刊介绍: The Journal of Dermatological Treatment covers all aspects of the treatment of skin disease, including the use of topical and systematically administered drugs and other forms of therapy. The Journal of Dermatological Treatment is positioned to give dermatologists cutting edge information on new treatments in all areas of dermatology. It also publishes valuable clinical reviews and theoretical papers on dermatological treatments.
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