Department of General, Visceral and Transplantation Surgery, RWTH Aachen University Hospital, Pauwelsstrasse 30, 52074, Aachen, Germany.
Department of Surgery, Hospital Linnich, Linnich, Germany.
Langenbecks Arch Surg. 2022 Mar;407(2):789-795. doi: 10.1007/s00423-022-02456-1. Epub 2022 Feb 15.
Appendectomy for acute appendicitis is one of the most common operative procedures worldwide in both children and adults. In particular, complicated (perforated) cases show high variability in individual outcomes. Here, we developed and validated a machine learning prediction model for postoperative outcome of perforated appendicitis.
Retrospective analyses of patients with clinically and histologically verified perforated appendicitis over 10 years were performed. Demographic and surgical baseline characteristics were used as competing predictors of single-patient outcomes along multiple dimensions via a random forest classifier with stratified subsampling. To assess whether complications could be predicted in new, individual cases, the ensuing models were evaluated using a replicated 10-fold cross-validation.
A total of 163 patients were included in the study. Sixty-four patients underwent laparoscopic surgery, whereas ninety-nine patients got a primary open procedure. Interval from admission to appendectomy was 9 ± 12 h and duration of the surgery was 74 ± 38 min. Forty-three patients needed intensive care treatment. Overall mortality was 0.6 % and morbidity rate was 15%. Severe complications as assessed by Clavien-Dindo > 3 were predictable in new cases with an accuracy of 68%. Need for ICU stay (> 24 h) could be predicted with an accuracy of 88%, whereas prolonged hospitalization (greater than 7-15 days) was predicted by the model with an accuracy of 76%.
We demonstrate that complications following surgery, and in particular, health care system-related outcomes like intensive care treatment and extended hospitalization, may be well predicted at the individual level from demographic and surgical baseline characteristics through machine learning approaches.
急性阑尾炎的阑尾切除术是全球范围内儿童和成人最常见的手术之一。特别是,复杂(穿孔)病例的个体结果差异很大。在这里,我们开发并验证了一种用于预测穿孔性阑尾炎术后结果的机器学习预测模型。
对 10 多年来经临床和组织学证实的穿孔性阑尾炎患者进行回顾性分析。通过分层抽样的随机森林分类器,使用患者个体的人口统计学和手术基线特征作为单一患者结局的竞争预测因子进行多维分析。为了评估新的个体病例中是否可以预测并发症,使用重复的 10 折交叉验证来评估随后的模型。
共纳入 163 例患者。64 例患者接受腹腔镜手术,99 例患者接受初次开放性手术。从入院到阑尾切除术的时间间隔为 9 ± 12 小时,手术时间为 74 ± 38 分钟。43 例患者需要重症监护治疗。总死亡率为 0.6%,发病率为 15%。新病例中严重并发症(Clavien-Dindo > 3)的预测准确率为 68%。重症监护治疗(>24 小时)的需求可以以 88%的准确率预测,而住院时间延长(大于 7-15 天)则可以以 76%的准确率预测。
我们证明,通过机器学习方法,从人口统计学和手术基线特征可以很好地预测手术相关并发症,特别是与医疗保健系统相关的结局,如重症监护治疗和延长住院时间。