Department of Pathology, Shinshu University School of Medicine, Nagano, Japan.
Division of Theoretical Bioinformatics, German Cancer Research Center (DKFZ), Heidelberg, Germany.
Sci Rep. 2017 Apr 25;7:46732. doi: 10.1038/srep46732.
Machine learning systems have recently received increased attention for their broad applications in several fields. In this study, we show for the first time that histological types of breast tumors can be classified using subtle morphological differences of microenvironmental myoepithelial cell nuclei without any direct information about neoplastic tumor cells. We quantitatively measured 11661 nuclei on the four histological types: normal cases, usual ductal hyperplasia and low/high grade ductal carcinoma in situ (DCIS). Using a machine learning system, we succeeded in classifying the four histological types with 90.9% accuracy. Electron microscopy observations suggested that the activity of typical myoepithelial cells in DCIS was lowered. Through these observations as well as meta-analytic database analyses, we developed a paracrine cross-talk-based biological mechanism of DCIS progressing to invasive cancer. Our observations support novel approaches in clinical computational diagnostics as well as in therapy development against progression.
机器学习系统在多个领域的广泛应用引起了人们的关注。本研究首次表明,可通过对微环境中的肌上皮细胞核的细微形态差异进行分析,对乳腺癌组织学类型进行分类,而无需获取肿瘤细胞的任何直接信息。我们对四种组织学类型(正常病例、普通导管增生和低/高级别导管原位癌)的 11661 个细胞核进行了定量测量。通过机器学习系统,我们成功地将这四种组织学类型分类为 90.9%的准确率。电子显微镜观察表明,DCIS 中典型肌上皮细胞的活性降低。通过这些观察以及荟萃分析数据库分析,我们提出了基于旁分泌串扰的 DCIS 进展为浸润性癌的生物学机制。我们的观察结果为临床计算诊断以及针对进展的治疗开发提供了新的方法。