Miyagi Yoshifumi
Department of Pediatrics, Haibara General Hospital, Shizuoka, JPN.
Cureus. 2023 Aug 17;15(8):e43644. doi: 10.7759/cureus.43644. eCollection 2023 Aug.
Differentiating between bacterial and viral gastroenteritis is crucial in pediatric enteritis practice. Our objective was to use machine learning (ML) to identify acute gastroenteritis (AG) caused by bacteria based on blood cell counts and interview findings.
ML was performed using a decision tree classifier based on data from previously published papers. We included 164 children between one and 108 months diagnosed with gastroenteritis, with 112 having bacterial AG and 52 having viral AG as subjects and controls. Feature selection was performed using least absolute shrinkage and selection operator (LASSO), and the classifier's performance was evaluated by five-fold cross-validation. Additionally, we presented a tree diagram of the decision tree classifier as a flowchart for practical applications.
The area under curve (AUC) was 0.80, indicating a moderate model. Three important features in this model were platelet-lymphocyte ratio, eosinophil count, and leukocyte count.
In conclusion, this study demonstrates that bacterial AG can be estimated from blood cell counts with moderate accuracy. These findings may be valuable in narrowing down bacterial AG in children with gastrointestinal symptoms.
在儿科肠炎诊疗中,区分细菌性和病毒性肠胃炎至关重要。我们的目标是利用机器学习(ML),基于血细胞计数和问诊结果来识别由细菌引起的急性肠胃炎(AG)。
基于先前发表论文的数据,使用决策树分类器进行机器学习。我们纳入了164名年龄在1至108个月之间被诊断为肠胃炎的儿童,其中112名患有细菌性AG,52名患有病毒性AG作为研究对象和对照。使用最小绝对收缩和选择算子(LASSO)进行特征选择,并通过五折交叉验证评估分类器的性能。此外,我们给出了决策树分类器的树形图,作为实际应用的流程图。
曲线下面积(AUC)为0.80,表明该模型具有中等水平。该模型中的三个重要特征是血小板-淋巴细胞比率、嗜酸性粒细胞计数和白细胞计数。
总之,本研究表明,通过血细胞计数可以以中等准确度估计细菌性AG。这些发现对于缩小有胃肠道症状儿童的细菌性AG范围可能具有重要价值。