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人工智能辅助解读心电图图像以预测造血细胞移植毒性。

Artificial intelligence enabled interpretation of ECG images to predict hematopoietic cell transplantation toxicity.

机构信息

Department of Internal Medicine, Adult Bone Marrow Transplant Service, Memorial Sloan Kettering Cancer Center, New York, NY.

Department of Medicine, Weill Cornell Medical College, New York, NY.

出版信息

Blood Adv. 2024 Nov 12;8(21):5603-5611. doi: 10.1182/bloodadvances.2024013636.

Abstract

Artificial intelligence (AI)-enabled interpretation of electrocardiogram (ECG) images (AI-ECGs) can identify patterns predictive of future adverse cardiac events. We hypothesized that such an approach would provide prognostic information for the risk of cardiac complications and mortality in patients undergoing hematopoietic cell transplantation (HCT). We retrospectively subjected ECGs obtained before HCT to an externally trained, deep-learning model designed to predict the risk of atrial fibrillation (AF). Included were 1377 patients (849 autologous [auto] HCT and 528 allogeneic [allo] HCT recipients). The median follow-up was 2.9 years. The 3-year cumulative incidence of AF was 9% (95% confidence interval [CI], 7-12) in patients who underwent auto HCT and 13% (10%-16%) in patients who underwent allo HCT. In the entire cohort, pre-HCT AI-ECG estimate of AF risk correlated highly with the development of clinical AF (hazard ratio [HR], 7.37; 95% CI, 3.53-15.4; P < .001), inferior survival (HR, 2.4; 95% CI, 1.3-4.5; P = .004), and greater risk of nonrelapse mortality (NRM; HR, 95% CI, 3.36; 1.39-8.13; P = .007), without increased risk of relapse. Association with mortality was only noted in allo HCT recipients, where the risk of NRM was greater. The use of cyclophosphamide after transplantation resulted in greater 90-day incidence of AF (13% vs 5%; P = .01) compared to calcineurin inhibitor-based graft-versus-host disease prophylaxis, corresponding to temporal changes in AI-ECG AF prediction after HCT. In summary, AI-ECG can inform risk of posttransplant cardiac outcomes and survival in HCT patients and represents a novel strategy for personalized risk assessment.

摘要

人工智能 (AI) 辅助心电图 (ECG) 图像解读 (AI-ECGs) 可以识别预测未来心脏不良事件的模式。我们假设这种方法可以为接受造血细胞移植 (HCT) 的患者提供心脏并发症和死亡率的预后信息。我们回顾性地对 HCT 前获得的心电图进行了一项外部训练的深度学习模型分析,旨在预测心房颤动 (AF) 的风险。共纳入 1377 名患者 (849 例自体 [auto] HCT 和 528 例异基因 [allo] HCT 受者)。中位随访时间为 2.9 年。接受 auto HCT 的患者中,AF 的 3 年累积发生率为 9%(95%置信区间 [CI],7-12),接受 allo HCT 的患者中为 13%(10%-16%)。在整个队列中,HCT 前 AI-ECG 对 AF 风险的估计与临床 AF 的发生高度相关(风险比 [HR],7.37;95%CI,3.53-15.4;P<0.001)、生存率降低(HR,2.4;95%CI,1.3-4.5;P=0.004)和非复发死亡率 (NRM) 风险增加(HR,95%CI,3.36;1.39-8.13;P=0.007),但复发风险无增加。这种相关性仅在 allo HCT 受者中观察到,其中 NRM 风险更大。与钙调神经磷酸酶抑制剂为基础的移植物抗宿主病预防相比,移植后使用环磷酰胺会导致更高的 90 天 AF 发生率(13%比 5%;P=0.01),这与 HCT 后 AI-ECG 对 AF 的预测发生了时间变化相对应。总之,AI-ECG 可以为 HCT 患者提供心脏移植后结局和生存率的风险信息,代表了一种新的个性化风险评估策略。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/926e/11550362/b02d3b6c569c/BLOODA_ADV-2024-013636-ga1.jpg

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