Diagnosing growing pains in children by using machine learning: a cross-sectional multicenter study

被引:6
|
作者
Akal, Fuat [1 ]
Batu, Ezgi D. [2 ,3 ]
Sonmez, Hafize Emine [4 ]
Karadag, Serife G. [4 ]
Demir, Ferhat [5 ]
Ayaz, Nuray Aktay [4 ]
Sozeri, Betul [5 ]
机构
[1] Hacettepe Univ, Dept Comp Engn, Ankara, Turkey
[2] Univ Hlth Sci, Ankara Training & Res Hosp, Dept Pediat, Div Rheumatol, Ankara, Turkey
[3] Hacettepe Univ, Dept Pediat, Div Rheumatol, Fac Med, Ankara, Turkey
[4] Univ Hlth Sci, Kanuni Sultan Suleyman Training & Res Hosp, Dept Pediat, Div Rheumatol, Istanbul, Turkey
[5] Univ Hlth Sci, Umraniye Training & Res Hosp, Dept Pediat, Div Rheumatol, Istanbul, Turkey
关键词
Growing pains; Machine learning; Artificial intelligence; Diagnosis; TESTS;
D O I
10.1007/s11517-022-02699-6
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Growing pains (GP) are the most common cause of recurrent musculoskeletal pain in children. There are no diagnostic criteria for GP. We aimed at analyzing GP-related characteristics and assisting GP diagnosis by using machine learning (ML). Children with GP and diseased controls were enrolled between February and August 2019. ML models were developed by using tenfold cross-validation to classify GP patients. A total of 398 patients with GP (F/M:1.3; median age 102 months) and 254 patients with other diseases causing limb pain were enrolled. The pain was bilateral (86.2%), localized in the lower extremities (89.7%), nocturnal (74%), and led to awakening at night (60.8%) in most GP patients. History of arthritis, trauma, morning stiffness, limping, limitation of activities, and school abstinence were more prevalent among controls than in GP patients (p = 0.016 for trauma; p < 0.001 for others). The experiments with different ML models revealed that the Random Forest algorithm had the best performance with 0.98 accuracy, 0.99 sensitivity, and 0.97 specificity for GP diagnosis. This is the largest cohort study of children with GP and the first study that attempts to diagnose GP by using ML techniques. Our ML model may be used to facilitate diagnosing GP.
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页码:3601 / 3614
页数:14
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