MESOPATH, MESONAT, MESOBANK Department of BioPathology Centre Leon Berard, Lyon, France.
MESOPATH, MESONAT, MESOBANK Department of BioPathology Centre Leon Berard, Lyon, France.
J Thorac Oncol. 2020 Jun;15(6):1037-1053. doi: 10.1016/j.jtho.2020.01.025. Epub 2020 Mar 9.
Histologic subtypes of malignant pleural mesothelioma are a major prognostic indicator and decision denominator for all therapeutic strategies. In an ambiguous case, a rare transitional mesothelioma (TM) pattern may be diagnosed by pathologists either as epithelioid mesothelioma (EM), biphasic mesothelioma (BM), or sarcomatoid mesothelioma (SM). This study aimed to better characterize the TM subtype from a histological, immunohistochemical, and molecular standpoint. Deep learning of pathologic slides was applied to this cohort.
A random selection of 49 representative digitalized sections from surgical biopsies of TM was reviewed by 16 panelists. We evaluated BAP1 expression and CDKN2A (p16) homozygous deletion. We conducted a comprehensive, integrated, transcriptomic analysis. An unsupervised deep learning algorithm was trained to classify tumors.
The 16 panelists recorded 784 diagnoses on the 49 cases. Even though a Kappa value of 0.42 is moderate, the presence of a TM component was diagnosed in 51%. In 49% of the histological evaluation, the reviewers classified the lesion as EM in 53%, SM in 33%, or BM in 14%. Median survival was 6.7 months. Loss of BAP1 observed in 44% was less frequent in TM than in EM and BM. p16 homozygous deletion was higher in TM (73%), followed by BM (63%) and SM (46%). RNA sequencing unsupervised clustering analysis revealed that TM grouped together and were closer to SM than to EM. Deep learning analysis achieved 94% accuracy for TM identification.
These results revealed that the TM pattern should be classified as non-EM or at minimum as a subgroup of the SM type.
恶性胸膜间皮瘤的组织学亚型是所有治疗策略的主要预后指标和决策因素。在模棱两可的病例中,病理学家可能会将罕见的过渡型间皮瘤(TM)模式诊断为上皮样间皮瘤(EM)、双相型间皮瘤(BM)或肉瘤样间皮瘤(SM)。本研究旨在从组织学、免疫组织化学和分子角度更好地描述 TM 亚型。本研究应用深度学习对该队列进行分析。
随机选择 49 例 TM 手术活检的代表性数字化切片,由 16 名专家进行回顾。我们评估了 BAP1 表达和 CDKN2A(p16)纯合缺失。我们进行了全面、综合的转录组分析。应用无监督深度学习算法对肿瘤进行分类。
16 名专家对 49 例病例记录了 784 次诊断。尽管 Kappa 值为 0.42 属于中等水平,但仍有 51%的病例被诊断为 TM 成分。在 49%的组织学评估中,53%的观察者将病变归类为 EM,33%归类为 SM,14%归类为 BM。中位生存期为 6.7 个月。在 44%的病例中观察到 BAP1 缺失,其发生率低于 EM 和 BM。TM 中 p16 纯合缺失率较高(73%),其次是 BM(63%)和 SM(46%)。无监督 RNA 测序聚类分析显示,TM 与 SM 聚类更接近,而与 EM 聚类较远。深度学习分析对 TM 的识别准确率达到 94%。
这些结果表明,TM 模式应归类为非 EM,或至少归类为 SM 型的一个亚组。