Computer-aided prognosis: Predicting patient and disease outcome via multi-modal image analysis

A. Madabhushi, A. Basavanhally, Scott Doyle, S. Agner, George Lee
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引用次数: 11

Abstract

Computer-aided prognosis (CAP) is a new and exciting complement to the field of computer-aided diagnosis (CAD) and involves developing computerized image analysis and multi-modal data fusion algorithms for helping physicians predict disease outcome and patient survival. At the Laboratory for Computational Imaging and Bioinformatics (LCIB)1 at Rutgers University we have been developing computerized algorithms for high dimensional data and image analysis for predicting disease outcome from multiple modalities includng MRI, digital pathology, and protein expression. Additionally, we have been developing novel data fusion algorithms based on nonlinear dimensionality reduction methods (such as Graph Embedding) to quantitatively integrate prognostic information from multiple data sources and modalities. In this paper, we briefly describe 5 representative and ongoing CAP projects at LCIB. These projects include (1) an Image-based Risk Score (IbRiS) algorithm for predicting outcome of ER+ breast cancer patients based on quantitative image analysis of digitized breast cancer biopsy specimens alone, (2) segmenting and determining extent of lymphocytic infiltration (identified as a possible prognostic marker for outcome in Her2+ breast cancers) from digitized histopathology, (3) segmenting and diagnosing highly agressive triple-negative breast cancers on dynamic contrast enhanced (DCE) MRI, (4) distinguishing patients with different Gleason grades of prostate cancer (grade being known to be correlated to outcome) from digitzed needle biopsy specimens, and (5) integrating protein expression measurements obtained from mass spectrometry with quantitative image features derived from digitized histopathology for distinguishing between prostate cancer patients at low and high risk of disease recurrence.
计算机辅助预后:通过多模态图像分析预测患者和疾病的预后
计算机辅助预后(CAP)是计算机辅助诊断(CAD)领域的一个新的和令人兴奋的补充,涉及开发计算机图像分析和多模态数据融合算法,以帮助医生预测疾病结局和患者生存。在罗格斯大学的计算成像和生物信息学实验室(LCIB)1,我们一直在开发用于高维数据和图像分析的计算机化算法,用于从MRI、数字病理学和蛋白质表达等多种方式预测疾病结果。此外,我们一直在开发基于非线性降维方法(如图嵌入)的新型数据融合算法,以定量地整合来自多个数据源和模式的预测信息。本文简要介绍了LCIB正在进行的5个具有代表性的CAP项目。这些项目包括:(1)基于数字化乳腺癌活检标本定量图像分析的基于图像的风险评分(IbRiS)算法,用于预测ER+乳腺癌患者的预后;(2)从数字化组织病理学中分割和确定淋巴细胞浸润的程度(被认为是Her2+乳腺癌预后的可能预后标志物);(3)在动态对比增强(DCE) MRI上对高度侵袭性三阴性乳腺癌进行分割和诊断;(4)从数字化针活检标本中区分不同Gleason分级(已知分级与预后相关)的前列腺癌患者;(5)将质谱获得的蛋白表达测量值与数字化组织病理学获得的定量图像特征相结合,用于区分疾病复发低风险和高风险的前列腺癌患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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