数字病理图像分析和细胞分割

L. Hernández, Paula Gothreaux, George Collins, L. Shih, G. Campbell
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引用次数: 3

摘要

只提供摘要形式。本项目建议使用数字信号处理(DSP)对病理切片图像进行实时捕获和分析,以提高准确性和效率。分析玻片图像的细胞密度统计和平均细胞核直径,有助于判断玻片样品是否异常。由于在显微镜下对一张载玻片中的数百到数千个细胞进行计数/测量是一项繁琐的工作,病理学家通常可以获得的人工结果往往受到人眼精度/效率的限制。从轻微的皮肤病变到大的肿瘤,每天在世界各地获得数以百万计的活检样本,焦急地等待着筛查/检查。MATLAB/spl / reg/是一种高级的、交互式的数据可视化/分析/计算环境,目前用于在计算机上对脑细胞进行自动图像分析和分割。通过比较癌变和正常图像组之间的细胞浓度和细胞核大小,MATLAB/spl reg/可以编程来区分正常脑细胞和可疑脑细胞。一般来说,病理图像分析使用计算机为基础的应用程序可以显示出很高的精度和效率筛选大量细胞在一个或多个样本载玻片。目前,MATLAB/spl reg/图像分析工作在捕获/数字化幻灯片图像上,每张图像需要一分钟的时间来自动预筛选需要进一步的人类专家分析的异常情况。随着未来实时/并行/机器智能的改进,我们希望DSP能够帮助各地的医生/病理学家/患者获得即时诊断,从而进行有效/及时的治疗,并在处理幻灯片图像中存在的细胞重叠和非细胞物体时,显示出与人类病理学家相当的可接受水平的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Digital pathological image analysis and cell segmentation
Summary form only given. This project proposes the use of Digital Signal Processing (DSP) for real-time capture and analysis of pathological slide images to improve accuracy and efficiency. Analyzing cell density statistics and average cell nuclei diameters of a slide image is useful to determine the abnormality of slide sample. Being tedious as it is in counting/measuring hundreds to thousands of cells in one sample slide under a microscope, the manual result, typically can be achieved by a pathologist, is often limited by human eye precision/efficiency. Millions of biopsy samples obtained daily around the world, from minor skin lesions to major tumors, are anxiously waiting to be screened/examined. As a high-level, interactive environment for data visualization/analysis/computation, MATLAB/spl reg/ is utilized currently to perform automatic image analysis and segmentation of brain cells on a computer. By comparing cell concentration and cell nuclei sizes between cancerous and normal image groups, MATLAB/spl reg/ can be programmed to distinguish normal brain cells from questionable ones. In general, pathological image analysis using a computer-based application could demonstrate great precision and efficiency for screening large quantities of cells on one or numerous sample slides. Currently, MATLAB/spl reg/ image analysis works on captured/digitized slide images and takes a minute per image to automatically pre-screen abnormalities that require further human expert analysis. With future real-time/parallel/machine-intelligent improvements, we hope that DSP can help physicians/pathologists/patients everywhere to get immediate diagnosis for effective/timely treatment, and can show accuracy within acceptable levels that are comparable to human pathologists in dealing with cell-overlapping and non-cell objects existing in slide images.
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