Padmanabhan Raghav K, Somasundar Vinay H, Griffith Sandra D, Zhu Jianliang, Samoyedny Drew, Tan Kay See, Hu Jiahao, Liao Xuejun, Carin Lawrence, Yoon Sam S, Flaherty Keith T, Dipaola Robert S, Heitjan Daniel F, Lal Priti, Feldman Michael D, Roysam Badrinath, Lee William M F
Department of Electrical and Computer Engineering, University of Houston, Houston, Texas, United States of America.
Department of Quantitative Health Sciences, Cleveland Clinic, Cleveland, Ohio, United States of America.
PLoS One. 2014 Mar 6;9(3):e90495. doi: 10.1371/journal.pone.0090495. eCollection 2014.
Currently, no available pathological or molecular measures of tumor angiogenesis predict response to antiangiogenic therapies used in clinical practice. Recognizing that tumor endothelial cells (EC) and EC activation and survival signaling are the direct targets of these therapies, we sought to develop an automated platform for quantifying activity of critical signaling pathways and other biological events in EC of patient tumors by histopathology. Computer image analysis of EC in highly heterogeneous human tumors by a statistical classifier trained using examples selected by human experts performed poorly due to subjectivity and selection bias. We hypothesized that the analysis can be optimized by a more active process to aid experts in identifying informative training examples. To test this hypothesis, we incorporated a novel active learning (AL) algorithm into FARSIGHT image analysis software that aids the expert by seeking out informative examples for the operator to label. The resulting FARSIGHT-AL system identified EC with specificity and sensitivity consistently greater than 0.9 and outperformed traditional supervised classification algorithms. The system modeled individual operator preferences and generated reproducible results. Using the results of EC classification, we also quantified proliferation (Ki67) and activity in important signal transduction pathways (MAP kinase, STAT3) in immunostained human clear cell renal cell carcinoma and other tumors. FARSIGHT-AL enables characterization of EC in conventionally preserved human tumors in a more automated process suitable for testing and validating in clinical trials. The results of our study support a unique opportunity for quantifying angiogenesis in a manner that can now be tested for its ability to identify novel predictive and response biomarkers.
目前,尚无可用的肿瘤血管生成病理或分子指标能够预测临床实践中使用的抗血管生成疗法的疗效。鉴于肿瘤内皮细胞(EC)以及EC激活和存活信号是这些疗法的直接靶点,我们试图开发一个自动化平台,通过组织病理学来量化患者肿瘤EC中关键信号通路的活性和其他生物学事件。利用人类专家选择的示例进行训练的统计分类器,对高度异质性人类肿瘤中的EC进行计算机图像分析时,由于主观性和选择偏差,效果不佳。我们推测,可以通过一个更主动的过程来优化分析,以帮助专家识别信息丰富的训练示例。为了验证这一推测,我们将一种新型主动学习(AL)算法纳入FARSIGHT图像分析软件,该软件通过寻找信息丰富的示例供操作员标记来帮助专家。由此产生的FARSIGHT-AL系统识别EC的特异性和灵敏度始终大于0.9,优于传统的监督分类算法。该系统模拟了个体操作员的偏好并产生了可重复的结果。利用EC分类的结果,我们还对免疫染色的人类透明细胞肾细胞癌和其他肿瘤中重要信号转导通路(MAP激酶、STAT3)的增殖(Ki-67)和活性进行了量化。FARSIGHT-AL能够以一种更自动化的过程对常规保存的人类肿瘤中的EC进行表征,适用于在临床试验中进行测试和验证。我们的研究结果支持了一个独特的机会,即以一种现在可以测试其识别新型预测性和反应性生物标志物能力的方式来量化血管生成。