Department of Abdominal Surgery, University Hospital of Split, Spinciceva 1, 21000, Split, Croatia.
Department of Medical Physics and Biophysics, School of Medicine, University of Split, Soltanska 2A, 21000, Split, Croatia.
Sci Rep. 2024 Jun 4;14(1):12772. doi: 10.1038/s41598-024-63513-x.
The diagnosis of acute appendicitis and concurrent surgery referral is primarily based on clinical presentation, laboratory and radiological imaging. However, utilizing such an approach results in as much as 10-15% of negative appendectomies. Hence, in the present study, we aimed to develop a machine learning (ML) model designed to reduce the number of negative appendectomies in pediatric patients with a high clinical probability of acute appendicitis. The model was developed and validated on a registry of 551 pediatric patients with suspected acute appendicitis that underwent surgical treatment. Clinical, anthropometric, and laboratory features were included for model training and analysis. Three machine learning algorithms were tested (random forest, eXtreme Gradient Boosting, logistic regression) and model explainability was obtained. Random forest model provided the best predictions achieving mean specificity and sensitivity of 0.17 ± 0.01 and 0.997 ± 0.001 for detection of acute appendicitis, respectively. Furthermore, the model outperformed the appendicitis inflammatory response (AIR) score across most sensitivity-specificity combinations. Finally, the random forest model again provided the best predictions for discrimination between complicated appendicitis, and either uncomplicated acute appendicitis or no appendicitis at all, with a joint mean sensitivity of 0.994 ± 0.002 and specificity of 0.129 ± 0.009. In conclusion, the developed ML model might save as much as 17% of patients with a high clinical probability of acute appendicitis from unnecessary surgery, while missing the needed surgery in only 0.3% of cases. Additionally, it showed better diagnostic accuracy than the AIR score, as well as good accuracy in predicting complicated acute appendicitis over uncomplicated and negative cases bundled together. This may be useful in centers that advocate for the conservative treatment of uncomplicated appendicitis. Nevertheless, external validation is needed to support these findings.
急性阑尾炎的诊断和同时进行的手术转诊主要基于临床表现、实验室和影像学检查。然而,这种方法的应用结果导致多达 10-15%的患者行阑尾切除术但并未发现阑尾炎。因此,在本研究中,我们旨在开发一种机器学习(ML)模型,以减少临床高度怀疑急性阑尾炎的儿科患者中阴性阑尾切除术的数量。该模型是在 551 名接受手术治疗的疑似急性阑尾炎的儿科患者的注册中心中开发和验证的。临床、人体测量和实验室特征均包含在模型训练和分析中。测试了三种机器学习算法(随机森林、极端梯度提升、逻辑回归),并获得了模型的可解释性。随机森林模型提供了最佳预测,其检测急性阑尾炎的平均特异性和敏感性分别为 0.17±0.01 和 0.997±0.001。此外,该模型在大多数敏感性特异性组合中均优于阑尾炎炎症反应(AIR)评分。最后,随机森林模型再次提供了最佳预测结果,用于区分复杂阑尾炎与单纯性急性阑尾炎或无阑尾炎,联合平均敏感性为 0.994±0.002,特异性为 0.129±0.009。总之,该开发的 ML 模型可能会使高达 17%的临床高度怀疑急性阑尾炎的患者免于不必要的手术,而只有 0.3%的患者会错过需要的手术。此外,它的诊断准确性优于 AIR 评分,并且在预测复杂急性阑尾炎与单纯性和阴性病例相结合时具有较好的准确性。这可能对主张保守治疗单纯性阑尾炎的中心有用。然而,需要进行外部验证来支持这些发现。