医学
溶栓
冲程(发动机)
改良兰金量表
缺血性中风
物理疗法
内科学
心肌梗塞
缺血
机械工程
工程类
作者
Tiago Pedro,José Maria Sousa,Luísa Fonseca,Manuel G. Gama,Goreti Moreira,Mariana Pintalhão,Paulo Castro‐Chaves,Ana Aires,Gonçalo Alves,Luís Augusto,Luís Albuquerque,Pedro Castro,Maria Luís Silva
标识
DOI:10.1136/jnis-2024-021556
摘要
Background Accurate prediction of functional outcomes is crucial in stroke management, but this remains challenging. Objective To evaluate the performance of the generative language model ChatGPT in predicting the functional outcome of patients with acute ischemic stroke (AIS) 3 months after mechanical thrombectomy (MT) in order to assess whether ChatGPT can used to be accurately predict the modified Rankin Scale (mRS) score at 3 months post-thrombectomy. Methods We conducted a retrospective analysis of clinical, neuroimaging, and procedure-related data from 163 patients with AIS undergoing MT. The agreement between ChatGPT’s exact and dichotomized predictions and actual mRS scores was assessed using Cohen’s κ. The added value of ChatGPT was measured by evaluating the agreement of predicted dichotomized outcomes using an existing validated score, the MT-DRAGON. Results ChatGPT demonstrated fair (κ=0.354, 95% CI 0.260 to 0.448) and good (κ=0.727, 95% CI 0.620 to 0.833) agreement with the true exact and dichotomized mRS scores at 3 months, respectively, outperforming MT-DRAGON in overall and subgroup predictions. ChatGPT agreement was higher for patients with shorter last-time-seen-well-to-door delay, distal occlusions, and better modified Thrombolysis in Cerebral Infarction scores. Conclusions ChatGPT adequately predicted short-term functional outcomes in post-thrombectomy patients with AIS and was better than the existing risk score. Integrating AI models into clinical practice holds promise for patient care, yet refining these models is crucial for enhanced accuracy in stroke management.
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