Oral Food Challenges (OFCs) are essential to accurately diagnosing food allergy in patients. However, patients are hesitant to undergo OFCs, and for those that do, there is limited access to allergists in rural/community healthcare settings. The prediction of OFC outcomes through machine learning methods can facilitate the de-labeling of food allergens at home, improve patient and physician comfort during OFCs, and economize medical resources by minimizing the number of OFCs performed. Clinical data was gathered from 1,112 patients who collectively underwent a total of 1,284 OFCs, and consisted of clinical factors including serum specific IgE, total IgE, skin prick tests (SPTs), symptoms, sex, and age. Using these clinical features, machine learning models were constructed to predict outcomes for peanut, egg, and milk challenge. The best performing model for each allergen was created using the Learning Using Concave and Convex Kernels (LUCCK) method, which achieved an Area under the Curve (AUC) for peanut, egg, and milk OFC prediction of 0.76, 0.68, and 0.70, respectively. Model interpretation via SHapley Additive exPlanations (SHAP) indicate that specific IgE, along with wheal and flare values from SPTs, are highly predictive of OFC outcomes. The results of this analysis suggest that machine learning has the potential to predict OFC outcomes and reveal relevant clinical factors for further study.
翻译:口腔食品挑战(OFCs)对于准确诊断病人食物过敏症(OFCs)至关重要,但是,病人对接受FOCs犹豫不决,对于病人来说,农村/社区保健环境中的过敏者接触FOC者的机会有限。通过机器学习方法预测FOC的结果,可以促进家庭食物过敏者不再贴标签,改善在FOCs期间病人和医生的舒适,并通过尽量减少所执行的OFCs(LUCCCK)来节约医疗资源。从1 112名病人收集了临床数据,这些病人集体经历了总共1 284个FCCs,由临床因素组成,包括血清特定IgE、皮肤刺测试(SPTs)、症状、性别和年龄等临床因素有限。利用这些临床特征,建立机器学习模型来预测花生、蛋和牛奶挑战的结果。利用使用Convex Kernels(LUCCK)方法创建了最佳的模型,该方法在花生、蛋和牛奶的CRurve(AUE)下取得了进一步的数据范围,根据SHADAP的预测结果分别通过0.76、0.6和SBIS的模型和0.7的预测,显示了SIS的预测结果。