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基于人工智能的预测急诊外科手术风险最优树(POTTER)计算器在急诊普通外科和急诊剖腹手术患者中的验证。

Validation of the Artificial Intelligence-Based Predictive Optimal Trees in Emergency Surgery Risk (POTTER) Calculator in Emergency General Surgery and Emergency Laparotomy Patients.

机构信息

Division of Trauma, Emergency Surgery, and Surgical Critical Care, Massachusetts General Hospital, Boston, MA.

Interpretable AI, Boston, MA.

出版信息

J Am Coll Surg. 2021 Jun;232(6):912-919.e1. doi: 10.1016/j.jamcollsurg.2021.02.009. Epub 2021 Mar 8.

Abstract

BACKGROUND

The Predictive Optimal Trees in Emergency Surgery Risk (POTTER) tool is an artificial intelligence-based calculator for the prediction of 30-day outcomes in patients undergoing emergency operations. In this study, we sought to assess the performance of POTTER in the emergency general surgery (EGS) population in particular.

METHODS

All patients who underwent EGS in the 2017 American College of Surgeons NSQIP database were included. The performance of POTTER in predicting 30-day postoperative mortality, morbidity, and 18 specific complications was assessed using the c-statistic metric. As a subgroup analysis, the performance of POTTER in predicting the outcomes of patients undergoing emergency laparotomy was assessed.

RESULTS

A total of 59,955 patients were included. Median age was 50 years and 51.3% were women. POTTER predicted mortality (c-statistic = 0.93) and morbidity (c-statistic = 0.83) extremely well. Among individual complications, POTTER had the highest performance in predicting septic shock (c-statistic = 0.93), respiratory failure requiring mechanical ventilation for 48 hours or longer (c-statistic = 0.92), and acute renal failure (c-statistic = 0.92). Among patients undergoing emergency laparotomy, the c-statistic performances of POTTER in predicting mortality and morbidity were 0.86 and 0.77, respectively.

CONCLUSIONS

POTTER is an interpretable, accurate, and user-friendly predictor of 30-day outcomes in patients undergoing EGS. POTTER could prove useful for bedside counseling of patients and their families and for benchmarking of EGS care.

摘要

背景

Predictive Optimal Trees in Emergency Surgery Risk(POTTER)工具是一种基于人工智能的计算器,用于预测接受急诊手术的患者 30 天的结果。在这项研究中,我们试图评估 POTTER 在急诊普通外科(EGS)人群中的表现。

方法

纳入了 2017 年美国外科医师学会 NSQIP 数据库中所有接受 EGS 的患者。使用 C 统计量评估 POTTER 在预测 30 天术后死亡率、发病率和 18 种特定并发症方面的性能。作为亚组分析,评估了 POTTER 在预测接受急诊剖腹术患者结局方面的表现。

结果

共纳入 59955 例患者。中位年龄为 50 岁,女性占 51.3%。POTTER 对死亡率(C 统计量=0.93)和发病率(C 统计量=0.83)的预测非常准确。在单独的并发症中,POTTER 在预测感染性休克(C 统计量=0.93)、需要机械通气 48 小时或更长时间的呼吸衰竭(C 统计量=0.92)和急性肾衰竭(C 统计量=0.92)方面表现最佳。在接受急诊剖腹术的患者中,POTTER 预测死亡率和发病率的 C 统计量分别为 0.86 和 0.77。

结论

POTTER 是一种可解释、准确且易于使用的 EGS 患者 30 天结局预测器。POTTER 可用于床边为患者及其家属提供咨询,并为 EGS 护理提供基准。

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