学习从组织图像预测前列腺癌复发

Q2 Medicine
Mahtab Farrokh, Neeraj Kumar, Peter H. Gann, Russell Greiner
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引用次数: 0

摘要

大约30%的前列腺癌患者接受根治性前列腺切除术后会出现生化癌复发(BCR)。准确预测哪些患者将经历BCR,可以确定哪些患者将受益于加强监测或辅助治疗。不幸的是,目前没有任何方法可以有效地预测这一点。我们开发并评估了PathCLR,这是一种新颖的半监督方法,可以学习一个模型,该模型可以使用苏木精和伊红(H&E)染色的组织微阵列(TMAs)来预测前列腺癌诊断后5年内的复发。学习过程包括两个连续的步骤:PathCLR (a)首先使用自监督学习来生成输入图像的有效特征表示,然后(b)将这些学习到的特征输入到一个完全监督的神经网络分类器中,以学习预测BCR的模型。我们使用两个大型前列腺癌数据集进行培训和评估:(1)合作前列腺癌组织资源(CPCTR)的374例患者,其中189例经历过BCR;(2)约翰霍普金斯大学(JHU)的646例患者的前列腺癌数据集,其中451例患有BCR。CPCTR的PathCLR(10倍交叉验证)F1评分为0.61,JHU为0.85。这在统计学上优于仅依赖临床病理特征(包括PSA水平、原发性和继发性Gleason分级等)的最佳学习模型(配对t检验P< 0.05)。我们将PathCLR优于仅使用临床病理特征的模型归因于其对组织核心图像和临床病理特征的习得潜在表征的利用。这一发现表明,在手术时的组织图像中有必要的预测信息,这些信息超出了从报告的临床病理特征中获得的知识,有助于预测患者的5年预后。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning to predict prostate cancer recurrence from tissue images
Roughly 30% of men with prostate cancer who undergo radical prostatectomy will suffer biochemical cancer recurrence (BCR). Accurately predicting which patients will experience BCR could identify who would benefit from increased surveillance or adjuvant therapy. Unfortunately, no current method can effectively predict this. We develop and evaluate PathCLR, a novel semi-supervised method that learns a model that can use hematoxylin and eosin (H&E)-stained tissue microarrays (TMAs) to predict prostate cancer recurrence within 5 years after diagnosis. The learning process involves 2 sequential steps: PathCLR (a) first employs self-supervised learning to generate effective feature representations of the input images, then (b) feeds these learned features into a fully supervised neural network classifier to learn a model for predicting BCR. We conducted training and evaluation using 2 large prostate cancer datasets: (1) the Cooperative Prostate Cancer Tissue Resource (CPCTR) with 374 patients, including 189 who experienced BCR, and (2) the Johns Hopkins University (JHU) prostate cancer dataset of 646 patients, with 451 patients having BCR. PathCLR’s (10-fold cross-validation) F1 score was 0.61 for CPCTR and 0.85 for JHU. This was statistically superior (paired t-test with P<.05) to the best-learned model that relied solely on clinicopathological features, including PSA level, primary and secondary Gleason Grade, etc. We attribute the improvement of PathCLR over models using only clinicopathological features to its utilization of both learned latent representations of tissue core images and clinicopathological features. This finding suggests that there is essential predictive information in tissue images at the time of surgery that goes beyond the knowledge obtained from reported clinicopathological features, helping predict the patient’s 5-year outcome.
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来源期刊
Journal of Pathology Informatics
Journal of Pathology Informatics Medicine-Pathology and Forensic Medicine
CiteScore
3.70
自引率
0.00%
发文量
2
审稿时长
18 weeks
期刊介绍: The Journal of Pathology Informatics (JPI) is an open access peer-reviewed journal dedicated to the advancement of pathology informatics. This is the official journal of the Association for Pathology Informatics (API). The journal aims to publish broadly about pathology informatics and freely disseminate all articles worldwide. This journal is of interest to pathologists, informaticians, academics, researchers, health IT specialists, information officers, IT staff, vendors, and anyone with an interest in informatics. We encourage submissions from anyone with an interest in the field of pathology informatics. We publish all types of papers related to pathology informatics including original research articles, technical notes, reviews, viewpoints, commentaries, editorials, symposia, meeting abstracts, book reviews, and correspondence to the editors. All submissions are subject to rigorous peer review by the well-regarded editorial board and by expert referees in appropriate specialties.
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