JPEG2000压缩对前列腺癌计算机辅助检测系统数字化组织病理学的影响评价

Scott Doyle, J. Monaco, A. Madabhushi, S. Lindholm, P. Ljung, Lance Ladic, J. Tomaszeweski, M. Feldman
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引用次数: 13

摘要

单个数字病理图像可以占用超过10gb的硬盘空间,使其难以存储,分析和传输。虽然图像压缩提供了一种减少存储需求的方法,但其对CAD(和病理学家)性能的影响尚不清楚。在这项工作中,我们评估了压缩对CAD系统在组织学切片中检测前列腺癌(CaP)能力的影响。CAD算法如下:使用区域生长算法对组织中的腺体进行分割。然后提取每个腺体的大小,并使用混合的Gamma分布建模。使用马尔可夫先验(具体来说,是一个概率成对马尔可夫模型)来鼓励附近的腺体共享同一类(即癌性或非癌性)。最后,使用距离-船体算法将癌腺体聚集到连续区域。我们使用JPEG2000对以14种不同压缩比压缩的12幅图像进行了CAD性能评估。当压缩比高达1:256时,算法性能(使用接收器下工作特性曲线测量)保持相对恒定。在此之后,性能急剧下降。我们也有一个专家病理学家查看压缩图像和分配的信心措施,为他们的诊断保真度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of effects of JPEG2000 compression on a computer-aided detection system for prostate cancer on digitized histopathology
A single digital pathology image can occupy over 10 gigabytes of hard disk space, rendering it difficult to store, analyze, and transmit. Though image compression provides a means of reducing the storage requirement, its effects on CAD (and pathologist) performance are not yet clear. In this work we assess the impact of compression on the ability of a CAD system to detect carcinoma of the prostate (CaP) in histological sections. The CAD algorithm proceeds as follows: Glands in the tissue are segmented using a region-growing algorithm. The size of each gland is then extracted and modeled using a mixture of Gamma distributions. A Markov prior (specifically, a probabilistic pairwise Markov model) is employed to encourage nearby glands to share the same class (i.e. cancerous or non-cancerous). Finally, cancerous glands are aggregated into continuous regions using a distance-hull algorithm. We evaluate CAD performance over 12 images compressed at 14 different compression ratios using JPEG2000. Algorithm performance (measured using the under the receiver operating characteristic curves) remains relatively constant for compression ratios up to 1:256. After this point performance degrades precipitously. We also have an expert pathologist view the compressed images and assign a confidence measure as to their diagnostic fidelity.
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