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基于机器学习的图像分析加速乳腺活检组织中复杂的癌前和肿瘤性导管病变的诊断。

Machine learning-based image analysis for accelerating the diagnosis of complicated preneoplastic and neoplastic ductal lesions in breast biopsy tissues.

机构信息

Molecular Pathology and Genetics Division, Kanagawa Cancer Center Research Institute, 2-3-2 Nakao, Asahi-Ku, Yokohama, Kanagawa, 241-8515, Japan.

Department of Pathology, Kanagawa Cancer Center, Yokohama, Japan.

出版信息

Breast Cancer Res Treat. 2021 Aug;188(3):649-659. doi: 10.1007/s10549-021-06243-2. Epub 2021 May 1.

Abstract

PURPOSE

Diagnosis of breast preneoplastic and neoplastic lesions is difficult due to their similar morphology in breast biopsy specimens. To diagnose these lesions, pathologists perform immunohistochemical analysis and consult with expert breast pathologists. These additional examinations are time-consuming and expensive. Artificial intelligence (AI)-based image analysis has recently improved, and may help in ordinal pathological diagnosis. Here, we showed the significance of machine learning-based image analysis of breast preneoplastic and neoplastic lesions for facilitating high-throughput diagnosis.

METHODS

Images were obtained from normal mammary glands, hyperplastic lesions, preneoplastic lesions and neoplastic lesions, such as usual ductal hyperplasia (UDH), columnar cell lesion (CCL), ductal carcinoma in situ (DCIS), and DCIS with comedo necrosis (comedo DCIS) in breast biopsy specimens. The original enhanced convoluted neural network (CNN) system was used for analyzing the pathological images.

RESULTS

The AI-based image analysis provided the following area under the curve values (AUC): normal lesion versus DCIS, 0.9902; DCIS versus comedo DCIS, 0.9942; normal lesion versus CCL, 0.9786; and UDH versus DCIS, 1.000. Multiple comparison analysis showed precision and recall scores similar to those of single comparison analysis. Based on the gradient-weighted class activation mapping (Grad-CAM) used to visualize the important regions reflecting the result of CNN analysis, the ratio of stromal tissue in the whole weighted area was significantly higher in UDH and CCL than that in DCIS.

CONCLUSIONS

These analyses may provide a more accurate and rapid pathological diagnosis of patients. Moreover, Grad-CAM identifies uncharted important histological characteristics for newer pathological findings and targets of research for understanding diseases.

摘要

目的

由于乳腺活检标本中良性肿瘤和恶性肿瘤的形态相似,因此对乳腺良、恶性肿瘤的诊断较为困难。为了诊断这些病变,病理学家进行免疫组化分析,并咨询乳腺病理专家。这些额外的检查既耗时又昂贵。基于人工智能(AI)的图像分析最近有所改进,可能有助于有序的病理诊断。在这里,我们展示了基于机器学习的乳腺良、恶性肿瘤病变图像分析在促进高通量诊断中的意义。

方法

从乳腺活检标本中的正常乳腺、增生性病变、癌前病变和肿瘤病变(如普通导管增生(UDH)、柱状细胞病变(CCL)、导管原位癌(DCIS)和伴有粉刺样坏死的 DCIS(粉刺样 DCIS))中获取图像。使用原始增强卷积神经网络(CNN)系统对病理图像进行分析。

结果

基于 AI 的图像分析提供了以下曲线下面积(AUC)值:正常病变与 DCIS 为 0.9902;DCIS 与粉刺样 DCIS 为 0.9942;正常病变与 CCL 为 0.9786;UDH 与 DCIS 为 1.000。多比较分析显示,精度和召回率与单比较分析相似。基于用于可视化反映 CNN 分析结果的重要区域的梯度加权类激活映射(Grad-CAM),在整个加权区域中,UDH 和 CCL 的间质组织比例明显高于 DCIS。

结论

这些分析可能为患者提供更准确、更快速的病理诊断。此外,Grad-CAM 确定了新的病理发现的未知重要组织学特征,以及用于理解疾病的研究目标。

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