Division of Cancer and Stem Cell, University of Nottingham, Nottingham, UK.
Department of Pathology, Suez Canal University, Ismailia, Egypt.
J Clin Pathol. 2022 Jun;75(6):365-372. doi: 10.1136/jclinpath-2021-207742. Epub 2021 Sep 23.
The assessment of cell proliferation is a key morphological feature for diagnosing various pathological lesions and predicting their clinical behaviour. Visual assessment of mitotic figures in routine histological sections remains the gold-standard method to evaluate the proliferative activity and grading of cancer. Despite the apparent simplicity of such a well-established method, visual assessment of mitotic figures in breast cancer (BC) remains a challenging task with low concordance among pathologists which can lead to under or overestimation of tumour grade and hence affects management. Guideline recommendations for counting mitoses in BC have been published to standardise methodology and improve concordance; however, the results remain less satisfactory. Alternative approaches such as the use of the proliferation marker Ki67 have been recommended but these did not show better performance in terms of concordance or prognostic stratification. The advent of whole slide image technology has brought the issue of mitotic counting in BC into the light again with more challenges to develop objective criteria for identifying and scoring mitotic figures in digitalised images. Using reliable and reproducible morphological criteria can provide the highest degree of concordance among pathologists and could even benefit the further application of artificial intelligence (AI) in breast pathology, and this relies mainly on the explicit description of these figures. In this review, we highlight the morphology of mitotic figures and their mimickers, address the current caveats in counting mitoses in breast pathology and describe how to strictly apply the morphological criteria for accurate and reliable histological grade and AI models.
细胞增殖的评估是诊断各种病理病变和预测其临床行为的关键形态学特征。在常规组织学切片中评估有丝分裂图是评估癌症增殖活性和分级的金标准方法。尽管这种成熟方法的外观非常简单,但在乳腺癌 (BC) 中评估有丝分裂图仍然是一项具有挑战性的任务,病理学家之间的一致性较低,这可能导致肿瘤分级低估或高估,从而影响治疗。已经发表了计数 BC 有丝分裂的指南建议,以标准化方法并提高一致性;然而,结果仍然不太令人满意。已经推荐了使用增殖标志物 Ki67 等替代方法,但就一致性或预后分层而言,这些方法的性能并没有更好。全幻灯片图像技术的出现再次将 BC 中的有丝分裂计数问题提上了议事日程,需要开发用于在数字化图像中识别和评分有丝分裂图的客观标准面临更多挑战。使用可靠和可重复的形态学标准可以在病理学家之间提供最高程度的一致性,甚至可以受益于人工智能 (AI) 在乳腺病理学中的进一步应用,这主要依赖于对这些标准的明确描述。在这篇综述中,我们强调了有丝分裂图及其模拟物的形态,讨论了在乳腺病理学中计数有丝分裂时存在的当前问题,并描述了如何严格应用形态学标准来进行准确和可靠的组织学分级和 AI 模型。