Ravdin P M, Clark G M, Hough J J, Owens M A, McGuire W L
Division of Medical Oncology, University of Texas Health Science Center, San Antonio 78284-7884.
Cytometry. 1993;14(1):74-80. doi: 10.1002/cyto.990140113.
A pattern recognition system based on Neural Network Analysis, a form of artificial intelligence, was used to search DNA flow cytometry histograms for features that correlated with breast cancer patients' risk of relapse. DNA flow cytometry histograms and clinical follow-up information from 796 breast cancer patients were used to train a Neural Network to predict the clinical outcome of patients in a separate independent set of 794 patients. Median follow-up in this patient data base was short, 23 months. Neural Network Analysis resulted in a model that evaluated DNA flow cytometry histograms differently than conventional analysis, which categorizes the histograms by ploidy and S-phase fraction. Neural Network Analysis appeared to identify low risk and high risk subsets of patients as accurately as conventional analysis. Neural Network Analysis placed heavy emphasis on the region to the right of the diploid G2/M peak, where a subpopulation of nuclei with high DNA content is seen even in many histograms scored as diploid by conventional techniques. The number of nuclei in this region was found to be a powerful predictor of patient outcome, and multivariate analysis showed that the number of nuclei in this region and the S-phase fraction both were independently predictive of relapse. This pilot study suggests that conventional analysis (based on a mechanistic interpretation of regions in flow cytometry histograms) might be used in conjunction with and improved by pattern recognition systems or insights derived from them.
一种基于神经网络分析(人工智能的一种形式)的模式识别系统被用于在DNA流式细胞术直方图中搜索与乳腺癌患者复发风险相关的特征。利用796例乳腺癌患者的DNA流式细胞术直方图和临床随访信息训练神经网络,以预测另一组794例独立患者的临床结局。该患者数据库中的中位随访时间较短,为23个月。神经网络分析得出的模型对DNA流式细胞术直方图的评估与传统分析不同,传统分析是根据倍性和S期分数对直方图进行分类。神经网络分析似乎与传统分析一样能准确识别低风险和高风险患者亚组。神经网络分析高度重视二倍体G2/M峰右侧的区域,即使在许多传统技术判定为二倍体的直方图中,也能看到一个DNA含量高的细胞核亚群。发现该区域的细胞核数量是患者预后的有力预测指标,多变量分析表明该区域的细胞核数量和S期分数均能独立预测复发。这项初步研究表明,传统分析(基于对流式细胞术直方图区域的机械解释)可与模式识别系统或从中获得的见解结合使用,并由此得到改进。