Deep Learning Provides Rapid Screen for Breast Cancer Metastasis with Sentinel Lymph Nodes.

IF 1.1 4区 医学 Q4 MEDICAL LABORATORY TECHNOLOGY Annals of clinical and laboratory science Pub Date : 2024-01-04
Kareem Allam, Xiaohong Iris Wang, Songlin Zhang, Jianmin Ding, Kevin Chiu, Karan Saluja, Amer Wahed, Hongxia Sun, Andy N D Nguyen
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Abstract

Objective: Deep learning has been shown to be useful in detecting breast cancer metastases by analyzing whole slide images (WSI) of sentinel lymph nodes; however, it requires extensive analysis of all the lymph node slides. Our deep learning study attempts to provide a rapid screen for metastasis by analyzing only a small set of image patches to detect changes in tumor environment.

Methods: We designed a convolutional neural network to build a diagnostic model for metastasis detection. We obtained WSIs of Hematoxylin and Eosin-stained slides from 34 cases with equal distribution in positive/negative categories. Two WSIs were selected from each case for a total of 69 WSIs. From each WSI, 40 image patches (100x100 pixels) were obtained to yield 2720 image patches, from which 2160 (79%) were used for training, 240 (9%) for validation, and 320 (12%) for testing. Interobserver variation was also examined among 3 users.

Results: The test results showed excellent diagnostic results: accuracy (91.15%), sensitivity (77.92%), and specificity (92.09%). No significant variation in results was observed among the 3 observers.

Conclusion: This preliminary study provided a proof of concept for conducting a rapid screen for metastasis rather than an exhaustive search for tumors in all fields of all sentinel lymph nodes.

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深度学习利用前哨淋巴结快速筛查乳腺癌转移
目的:通过分析前哨淋巴结的全切片图像(WSI),深度学习已被证明可用于检测乳腺癌转移;然而,这需要对所有淋巴结切片进行大量分析。我们的深度学习研究试图通过分析一小部分图像片段来检测肿瘤环境的变化,从而快速筛查转移:方法:我们设计了一个卷积神经网络来建立转移检测诊断模型。我们从 34 个病例的血栓素和伊红染色切片中获得了 WSIs,这些 WSIs 在阳性/阴性类别中分布均等。每个病例选取两个 WSI,共计 69 个 WSI。从每个 WSI 中获取 40 个图像片段(100x100 像素),共得到 2720 个图像片段,其中 2160 个(79%)用于训练,240 个(9%)用于验证,320 个(12%)用于测试。此外,还对 3 名用户的观察者之间的差异进行了研究:测试结果显示了极佳的诊断效果:准确率(91.15%)、灵敏度(77.92%)和特异性(92.09%)。结论:这项初步研究证明了这一概念:这项初步研究为快速筛查肿瘤转移提供了概念验证,而不是在所有前哨淋巴结的所有区域进行详尽的肿瘤搜索。
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来源期刊
Annals of clinical and laboratory science
Annals of clinical and laboratory science 医学-医学实验技术
CiteScore
1.60
自引率
0.00%
发文量
112
审稿时长
6-12 weeks
期刊介绍: The Annals of Clinical & Laboratory Science welcomes manuscripts that report research in clinical science, including pathology, clinical chemistry, biotechnology, molecular biology, cytogenetics, microbiology, immunology, hematology, transfusion medicine, organ and tissue transplantation, therapeutics, toxicology, and clinical informatics.
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