利用多摄像头阵列扫描仪(MCAS)进行细胞分辨率的快速三维成像,用于数字细胞病理学研究

Kanghyun Kim, Amey Chaware, Clare B. Cook, Shiqi Xu, Monica Abdelmalak, Colin Cooke, Kevin C. Zhou, Mark Harfouche, Paul Reamey, Veton Saliu, Jed Doman, Clay Dugo, Gregor Horstmeyer, Richard Davis, Ian Taylor-Cho, Wen-Chi Foo, Lucas Kreiss, Xiaoyin Sara Jiang, Roarke Horstmeyer
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引用次数: 0

摘要

长期以来,光学显微镜一直是细胞病理学诊断的标准方法。整张玻片扫描仪可以自动对大面积样本进行成像和数字化,但速度慢、价格昂贵,因此并不普及。细胞学样本的临床诊断尤其具有挑战性,因为这些样本既分布在大面积区域,又很厚,需要三维捕捉。在此,我们介绍一种新型并行显微镜,它能以 1.2 和 0.6 μm 的分辨率在极宽的视场(54 × 72 mm2)内扫描厚标本,并配有机器学习软件来快速评估这些 1600 万像素的扫描结果。这种多摄像头阵列扫描仪(MCAS)由 48 个微型摄像头组成,它们紧密排列,可同时对不同区域进行成像。MCAS 每张快照可捕捉 624 万像素,速度明显快于大多数传统的整张幻灯片扫描仪。我们使用该系统对整个细胞学样本进行了数字化处理(仅用几分钟就以三维方式扫描了整整三张玻片),并展示了两种辅助病理学家的机器学习技术:第一种是肺部标本中的腺癌检测模型(召回率为 0.73);第二种是肺部涂片的玻片级分类模型(AUC 为 0.969)。
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Rapid 3D imaging at cellular resolution for digital cytopathology with a multi-camera array scanner (MCAS)
Optical microscopy has long been the standard method for diagnosis in cytopathology. Whole slide scanners can image and digitize large sample areas automatically, but are slow, expensive and therefore not widely available. Clinical diagnosis of cytology specimens is especially challenging since these samples are both spread over large areas and thick, which requires 3D capture. Here, we introduce a new parallelized microscope for scanning thick specimens across extremely wide fields-of-view (54 × 72 mm2) at 1.2 and 0.6 μm resolutions, accompanied by machine learning software to rapidly assess these 16 gigapixel scans. This Multi-Camera Array Scanner (MCAS) comprises 48 micro-cameras closely arranged to simultaneously image different areas. By capturing 624 megapixels per snapshot, the MCAS is significantly faster than most conventional whole-slide scanners. We used this system to digitize entire cytology samples (scanning three entire slides in 3D in just several minutes) and demonstrate two machine learning techniques to assist pathologists: first, an adenocarcinoma detection model in lung specimens (0.73 recall); second, a slide-level classification model of lung smears (0.969 AUC).
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