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ChatGPT在预测高流量氧疗效果方面达到了与专科医生相当的准确性。

ChatGPT achieves comparable accuracy to specialist physicians in predicting the efficacy of high-flow oxygen therapy.

作者信息

Liu Taotao, Duan Yaocong, Li Yanchun, Hu Yingying, Su Lingling, Zhang Aiping

机构信息

Department of Surgical Intensive Care Unit, Beijing Hospital, National Center of Gerontology, Institute of Geriatric Medicine, Chinese Academy of Medical Sciences, Beijing, 100730, China.

School of Psychology and Neuroscience, University of Glasgow, Glasgow, G12 8QQ, UK.

出版信息

Heliyon. 2024 May 22;10(11):e31750. doi: 10.1016/j.heliyon.2024.e31750. eCollection 2024 Jun 15.

Abstract

BACKGROUND

The failure of high-flow nasal cannula (HFNC) oxygen therapy can necessitate endotracheal intubation in patients, making timely prediction of the intubation risk following HFNC therapy crucial for reducing mortality due to delays in intubation.

OBJECTIVES

To investigate the accuracy of ChatGPT in predicting the endotracheal intubation risk within 48 h following HFNC therapy and compare it with the predictive accuracy of specialist and non-specialist physicians.

METHODS

We conducted a prospective multicenter cohort study based on the data of 71 adult patients who received HFNC therapy. For each patient, their baseline data and physiological parameters after 6-h HFNC therapy were recorded to create a 6-alternative-forced-choice questionnaire that asked participants to predict the 48-h endotracheal intubation risk using scale options ranging from 1 to 6, with higher scores indicating a greater risk. GPT-3.5, GPT-4.0, respiratory and critical care specialist physicians and non-specialist physicians completed the same questionnaires (N = 71) respectively. We then determined the optimal diagnostic cutoff point, using the Youden index, for each predictor and 6-h ROX index, and compared their predictive performance using receiver operating characteristic (ROC) analysis.

RESULTS

The optimal diagnostic cutoff points were determined to be ≥ 4 for both GPT-4.0 and specialist physicians. GPT-4.0 demonstrated a precision of 76.1 %, with a specificity of 78.6 % (95%CI = 52.4-92.4 %) and sensitivity of 75.4 % (95%CI = 62.9-84.8 %). In comparison, the precision of specialist physicians was 80.3 %, with a specificity of 71.4 % (95%CI = 45.4-88.3 %) and sensitivity of 82.5 % (95%CI = 70.6-90.2 %). For GPT-3.5 and non-specialist physicians, the optimal diagnostic cutoff points were ≥5, with precisions of 73.2 % and 64.8 %, respectively. The area under the curve (AUC) in ROC analysis for GPT-4.0 was 0.821 (95%CI = 0.698-0.943), which was the highest among the predictors and significantly higher than that of non-specialist physicians [0.662 (95%CI = 0.518-0.805), P = 0.011].

CONCLUSION

GPT-4.0 achieves an accuracy level comparable to specialist physicians in predicting the 48-h endotracheal intubation risk following HFNC therapy, based on patient baseline data and physiological parameters after 6-h HFNC therapy.

摘要

背景

高流量鼻导管(HFNC)氧疗失败可能使患者需要进行气管插管,因此及时预测HFNC治疗后的插管风险对于降低因插管延迟导致的死亡率至关重要。

目的

研究ChatGPT在预测HFNC治疗后48小时内气管插管风险方面的准确性,并将其与专科医生和非专科医生的预测准确性进行比较。

方法

我们基于71例接受HFNC治疗的成年患者的数据进行了一项前瞻性多中心队列研究。对于每位患者,记录其基线数据和HFNC治疗6小时后的生理参数,以创建一份6选1的强制选择问卷,要求参与者使用1至6的量表选项预测48小时内的气管插管风险,分数越高表明风险越大。GPT-3.5、GPT-4.0、呼吸与重症监护专科医生和非专科医生分别完成相同的问卷(N = 71)。然后,我们使用约登指数为每个预测指标和6小时ROX指数确定最佳诊断切点,并使用受试者操作特征(ROC)分析比较它们的预测性能。

结果

GPT-4.0和专科医生的最佳诊断切点均确定为≥4。GPT-4.0的精确度为76.1%,特异性为78.6%(95%CI = 52.4 - 92.4%),敏感性为75.4%(95%CI = 62.9 - 84.8%)。相比之下,专科医生的精确度为80.3%,特异性为71.4%(95%CI = 45.4 - 88.3%),敏感性为82.5%(95%CI = 70.6 - 90.2%)。对于GPT-3.5和非专科医生,最佳诊断切点为≥5,精确度分别为73.2%和64.8%。GPT-4.0在ROC分析中的曲线下面积(AUC)为0.821(95%CI = 0.698 - 0.943),是所有预测指标中最高的,且显著高于非专科医生的AUC[0.662(95%CI = 0.518 - 0.805),P = 0.011]。

结论

基于患者基线数据和HFNC治疗6小时后的生理参数,GPT-4.0在预测HFNC治疗后48小时内气管插管风险方面达到了与专科医生相当的准确性水平。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9ee2/11140787/63d0550ae1e7/gr1.jpg

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