Wu Si, Yue Meng, Zhang Jun, Li Xiaoxian, Li Zaibo, Zhang Huina, Wang Xinran, Han Xiao, Cai Lijing, Shang Jiuyan, Jia Zhanli, Wang Xiaoxiao, Li Jinze, Liu Yueping
Department of Pathology, the Fourth Hospital of Hebei Medical University, Shijiazhuang, Hebei, China.
Tencent AI Lab, Nanshan District, Tencent Binhai Building, Shenzhen, Guangdong, China.
Mod Pathol. 2023 Mar;36(3):100054. doi: 10.1016/j.modpat.2022.100054. Epub 2023 Jan 10.
The new human epidermal growth factor receptor (HER)2-targeting antibody-drug conjugate offers the opportunity to treat patients with HER2-low breast cancer. Distinguishing HER2 immunohistochemical (IHC) scores of 0 and 1+ is not only critical but also challenging owing to HER2 heterogeneity and variability of observers. In this study, we aimed to increase the interpretation accuracy and consistency of HER2 IHC 0 and 1+ evaluation through assistance from an artificial intelligence (AI) algorithm. In addition, we examined the value of our AI algorithm in evaluating HER2 IHC scores in tumors with heterogeneity. AI-assisted interpretation consisted of AI algorithms and an augmenting reality module with a microscope. Fifteen pathologists (5 junior, 5 midlevel, and 5 senior) participated in this multi-institutional 2-round ring study that included 246 infiltrating duct carcinoma cases that were not otherwise specified. In round 1, pathologists analyzed 246 HER2 IHC slides by microscope without AI assistance. After a 2-week washout period, the pathologists read the same slides with AI algorithm assistance and rendered the definitive results by adjusting to the AI algorithm. The accuracy of interpretation accuracy with AI assistance (0.93 vs 0.80), thereby the evaluation precision of HER2 0 and the recall of HER2 1+. In addition, the AI algorithm improved the total consistency (intraclass correlation coefficient = 0.542-0.812), especially in HER2 1+ cases. In cases with heterogeneity, accuracy improved significantly (0.68 to 0.89) and to a similar level as in cases without heterogeneity (accuracy, 0.97). Both accuracy and consistency improved more for junior pathologists than those for the midlevel and senior pathologists. To the best of our knowledge, this is the first study to show that the accuracy and consistency of HER2 IHC 0 and 1+ evaluation and the accuracy of HER2 IHC evaluation in breast cancers with heterogeneity can be significantly improved using AI-assisted interpretation.
新型靶向人表皮生长因子受体(HER)2的抗体药物偶联物为治疗HER2低表达乳腺癌患者提供了机会。由于HER2的异质性和观察者的变异性,区分HER2免疫组化(IHC)评分为0和1+不仅至关重要,而且具有挑战性。在本研究中,我们旨在通过人工智能(AI)算法的辅助提高HER2 IHC 0和1+评估的解释准确性和一致性。此外,我们还研究了我们的AI算法在评估具有异质性的肿瘤中HER2 IHC评分的价值。AI辅助解释由AI算法和带有显微镜的增强现实模块组成。15名病理学家(5名初级、5名中级和5名高级)参与了这项多机构的两轮环形研究,该研究包括246例未另作说明的浸润性导管癌病例。在第一轮中,病理学家在没有AI辅助的情况下通过显微镜分析246张HER2 IHC玻片。经过2周的洗脱期后,病理学家在AI算法的辅助下阅读相同的玻片,并通过调整AI算法得出最终结果。AI辅助下的解释准确性(0.93对0.80),从而提高了HER2 0的评估精度和HER2 1+的召回率。此外,AI算法提高了总体一致性(组内相关系数=0.542-0.812),尤其是在HER2 1+病例中。在具有异质性的病例中,准确性显著提高(从0.68提高到0.89),并达到与无异质性病例相似的水平(准确性为0.97)。初级病理学家的准确性和一致性提高幅度均大于中级和高级病理学家。据我们所知,这是第一项表明使用AI辅助解释可以显著提高HER2 IHC 0和1+评估的准确性和一致性以及HER2 IHC在具有异质性的乳腺癌中评估准确性的研究。