Redemann Jordan, Schultz Fred A, Martinez Cathy, Harrell Michael, Clark Douglas P, Martin David R, Hanson Joshua A
Department of Pathology, University of New Mexico School of Medicine, Albuquerque, NM, USA.
J Pathol Inform. 2020 Oct 9;11:32. doi: 10.4103/jpi.jpi_37_20. eCollection 2020.
Determining the site of origin for metastatic well-differentiated neuroendocrine tumors (WDNETs) is challenging, and immunohistochemical (IHC) profiles do not always lead to a definitive diagnosis. We sought to determine if a deep-learning convolutional neural network (CNN) could improve upon established IHC profiles in predicting the site of origin in a cohort of WDNETs from the common primary sites.
Hematoxylin and eosin (H&E)-stained tissue microarrays (TMAs) were created using 215 WDNETs arising from the known primary sites. A CNN trained and tested on 60% ( = 130) and 40% ( = 85) of these cases, respectively. One hundred and seventy-nine cases had TMA tissue remaining for the IHC analysis. These cases were stained with IHC markers pPAX8, CDX2, SATB2, and thyroid transcription factor-1 (markers of pancreas/duodenum, ileum/jejunum/duodenum, colorectum/appendix, and lung WDNET sites of origin, respectively). The CNN diagnosis was deemed correct if it designated a majority or plurality of the tumor area as the known site of origin. The IHC diagnosis was deemed correct if the most specific marker for a particular site of origin met an H-score threshold determined by two pathologists.
When all cases were considered, the CNN correctly identified the site of origin at a lower rate compared to IHC (72% vs. 82%, respectively). Of the 85 cases in the CNN test set, 66 had sufficient TMA material for IHC stains, thus 66 cases were available for a direct case-by-case comparison of IHC versus CNN. The CNN correctly identified 70% of these cases, while IHC correctly identified 76%, a finding that was not statistically significant ( = 0.56).
A CNN can identify WDNET site of origin at an accuracy rate close to the current gold standard IHC methods.
确定转移性高分化神经内分泌肿瘤(WDNETs)的原发部位具有挑战性,免疫组织化学(IHC)特征并不总能得出明确诊断。我们试图确定深度学习卷积神经网络(CNN)是否能在预测一组来自常见原发部位的WDNETs的原发部位方面优于既定的IHC特征。
使用来自已知原发部位的215例WDNETs制作苏木精和伊红(H&E)染色的组织微阵列(TMA)。一个CNN分别在这些病例的60%(=130)和40%(=85)上进行训练和测试。179例病例有剩余的TMA组织用于IHC分析。这些病例用IHC标志物pPAX8、CDX2、SATB2和甲状腺转录因子-1(分别为胰腺/十二指肠、回肠/空肠/十二指肠、结肠/阑尾和肺WDNET原发部位的标志物)进行染色。如果CNN诊断将肿瘤区域的大多数或多个指定为已知原发部位,则认为该诊断正确。如果特定原发部位的最特异性标志物达到由两名病理学家确定的H评分阈值,则认为IHC诊断正确。
当考虑所有病例时,与IHC相比,CNN正确识别原发部位的比率较低(分别为72%和82%)。在CNN测试集中的85例病例中,66例有足够的TMA材料用于IHC染色,因此66例病例可用于IHC与CNN的直接逐例比较。CNN正确识别了其中70%的病例,而IHC正确识别了76%,这一发现无统计学意义(=0.56)。
CNN能够以接近当前金标准IHC方法的准确率识别WDNET的原发部位。