From the Department of Anatomical Pathology (Chow, Thike, Tan, Nasir), Singapore General Hospital, Singapore.
and the University of Tasmania, Tasmania, Australia (Chow).
Arch Pathol Lab Med. 2020 Nov 1;144(11):1397-1400. doi: 10.5858/arpa.2019-0435-OA.
CONTEXT.—: Mitotic count is an important histologic criterion for grading and prognostication in phyllodes tumors (PTs). Counting mitoses is a routine practice for pathologists evaluating neoplasms, but different microscopes, variable field selection, and areas have led to possible misclassification.
OBJECTIVE.—: To determine whether 10 high-power fields (HPFs) or whole slide mitotic counts correlated better with PT clinicopathologic parameters using digital pathology (DP). We also aimed to find out whether this study might serve as a basis for an artificial intelligence (AI) protocol to count mitosis.
DESIGN.—: Representative slides were chosen from 93 cases of PTs diagnosed between 2014 and 2015. The slides were scanned and viewed with DP. Mitotic counting was conducted on the whole slide image, before choosing 10 HPFs and demarcating the tumor area in DP. Values of mitoses per millimeter squared were used to compare results between 10 HPFs and the whole slide. Correlations with clinicopathologic parameters were conducted.
RESULTS.—: Both whole slide counting of mitoses and 10 HPFs had similar statistically significant correlation coefficients with grade, stromal atypia, and stromal hypercellularity. Neither whole slide mitotic counts nor mitoses per 10 HPFs showed statistically significant correlations with patient age and tumor size.
CONCLUSIONS.—: Accurate mitosis counting in breast PTs is important for grading. Exploring machine learning on digital whole slides may influence approaches to training, testing, and validation of a future AI algorithm.
有丝分裂计数是叶状肿瘤(PT)分级和预后的重要组织学标准。对病理学家评估肿瘤时,有丝分裂计数是常规做法,但不同的显微镜、可变的视野选择和区域导致可能的分类错误。
使用数字病理学(DP)确定 10 个高倍视野(HPF)或全片有丝分裂计数与 PT 临床病理参数的相关性,我们还旨在找出该研究是否可以作为一种人工智能(AI)计数有丝分裂的协议基础。
从 2014 年至 2015 年间诊断的 93 例 PT 中选择有代表性的切片。使用 DP 对切片进行扫描和查看。在 DP 中选择 10 个 HPF 并划定肿瘤区域之前,对全片图像进行有丝分裂计数。使用每平方毫米有丝分裂数来比较 10 HPF 和全片之间的结果。进行与临床病理参数的相关性分析。
全片有丝分裂计数和 10 HPF 与分级、基质异型性和基质细胞增多均具有相似的统计学显著相关系数。全片有丝分裂计数和每 10 HPF 的有丝分裂数与患者年龄和肿瘤大小均无统计学显著相关性。
准确计数乳腺 PT 中的有丝分裂对分级很重要。探索数字全片上的机器学习可能会影响未来 AI 算法的培训、测试和验证方法。