Artificial Intelligence-Powered Human Epidermal Growth Factor Receptor 2 Quantification and Clinical Outcomes in Human Epidermal Growth Factor Receptor 2-Positive Biliary Tract Cancer Treated With Trastuzumab Plus Folinic Acid, Fluorouracil, and Oxaliplatin.

IF 5.6 2区 医学 Q1 ONCOLOGY
JCO precision oncology Pub Date : 2025-10-01 Epub Date: 2025-10-02 DOI:10.1200/PO-25-00510
Hongsik Kim, Chiyoon Oum, Soo Ick Cho, Wonkyung Jung, Hong Jae Chon, Myung Ah Lee, Hyeon-Su Im, Min Hwan Kim, Taekjin Nam, Chan-Young Ock, Hye Jin Choi, Choong-Kun Lee
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Abstract

Purpose: Despite recent advances in anti-human epidermal growth factor receptor 2 (HER2) treatments for HER2-positive biliary tract cancer (BTC), current guidelines lack clear thresholds for defining HER2 positivity in BTC. This study investigated the use of artificial intelligence (AI) to analyze HER2 expression and immune phenotypes (IP) in patients with HER2-positive BTC treated with anti-HER2 therapy.

Materials and methods: We conducted a post hoc analysis of a phase II trial (KCSG HB19-14) of trastuzumab plus folinic acid, fluorouracil, and oxaliplatin (FOLFOX) for HER2-positive BTC. AI-powered HER2 quantification and IP analyses were performed on whole-slide images of pretreatment samples. Clinical outcomes were analyzed on the basis of HER2 positivity using a continuous AI-based HER2 immunohistochemistry scoring system. Additionally, we evaluated the spatial distribution of tumor-infiltrating lymphocytes using AI-based IP analysis.

Results: Among 29 patients, the overall concordance rate between pathologists and the HER2-AI analyzer was 79.1%. AI-defined HER2-positivity status, characterized by a ≥30% H3 tumor cell proportion threshold, significantly predicted improved outcomes with trastuzumab plus FOLFOX (progression-free survival: 6.7 v 4.9 months, P = .039; overall survival: not reached v 8.4 months, P = .018). By contrast, traditional pathologist-based scoring did not stratify outcomes. AI-powered immune profiling revealed that HER2 3+ tumors predominantly exhibited immune-desert phenotypes, whereas HER2 2+ tumors displayed more inflamed phenotypes, potentially limiting the efficacy of current immunotherapy regimens for HER2 3+ BTC.

Conclusion: AI-powered HER2 quantification provides a refined biomarker for predicting the response to HER2-targeted therapies in BTC, proposing a ≥30% HER2 3+ tumor cell proportion threshold. Our findings highlight the potential of combining anti-HER2 therapy with immune checkpoint inhibitors on the basis of IP profiles.

人工智能驱动的人表皮生长因子受体2定量和人类表皮生长因子受体2阳性胆道癌患者使用曲妥珠单抗联合亚叶酸、氟尿嘧啶和奥沙利铂治疗的临床结果
目的:尽管最近在抗人表皮生长因子受体2 (HER2)治疗HER2阳性胆道癌(BTC)方面取得了进展,但目前的指南缺乏明确的阈值来定义BTC中HER2阳性。本研究探讨了利用人工智能(AI)分析HER2阳性BTC患者接受抗HER2治疗后的HER2表达和免疫表型(IP)。材料和方法:我们对曲妥珠单抗联合亚叶酸、氟尿嘧啶和奥沙利铂(FOLFOX)治疗her2阳性BTC的II期试验(KCSG HB19-14)进行了事后分析。对预处理样品的全片图像进行人工智能驱动的HER2定量和IP分析。采用基于人工智能的连续HER2免疫组织化学评分系统,根据HER2阳性情况分析临床结果。此外,我们使用基于人工智能的IP分析评估肿瘤浸润淋巴细胞的空间分布。结果:29例患者中,病理医师与HER2-AI分析仪的总体符合率为79.1%。ai定义的her2阳性状态,以H3肿瘤细胞比例阈值≥30%为特征,可显著预测曲妥珠单抗联合FOLFOX的改善结果(无进展生存期:6.7 v 4.9个月,P = 0.039;总生存期:未达到v 8.4个月,P = 0.018)。相比之下,传统的基于病理学的评分不能对结果进行分层。ai驱动的免疫分析显示,her2.3 +肿瘤主要表现出免疫荒漠表型,而her2.2 +肿瘤表现出更多的炎症表型,这可能限制了当前免疫治疗方案对her2.3 + BTC的疗效。结论:ai驱动的HER2定量为预测BTC对HER2靶向治疗的反应提供了一种精细的生物标志物,提出了≥30%的HER2 3+肿瘤细胞比例阈值。我们的研究结果强调了基于IP谱结合抗her2治疗和免疫检查点抑制剂的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
9.10
自引率
4.30%
发文量
363
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