Exploring the association between early childhood caries, malnutrition, and anemia by machine learning algorithm.

K Fasna, Saima Yunus Khan, Ayesha Ahmad, Manoj Kumar Sharma
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Abstract

Objective: The objective of this study was to determine the prevalence of early childhood caries in children with severe acute malnutrition (SAM) and also the hierarchy of association if any with malnutrition, anemia, and other risk factors with ECC using machine learning algorithms.

Methods: A hospital-based preventive and interventional study was conducted on SAM children (age = 2 to <6 years) who were admitted to the malnutrition treatment unit (MTU). An oral examination for early childhood caries status was done using the deft index. The anthropometric measurements and blood examination reports were recorded. Oral health education and preventive dental treatments were given to the admitted children. Three machine learning algorithms (Random Tree, CART, and Neural Network) were applied to assess the relationship between early childhood caries, malnutrition, anemia, and the risk factors.

Results: The Random Tree model showed that age was the most significant factor in predicting ECC with predictor importance of 98.75%, followed by maternal education (29.20%), hemoglobin level (16.67%), frequency of snack intake (9.17%), deft score (8.75%), consumption of snacks (7.1%), breastfeeding (6.25%), severe acute malnutrition (5.42%), frequency of sugar intake (3.75%), and religion at the minimum predictor importance of 2.08%.

Conclusion: Anemia and malnutrition play a significant role in the prediction, hence in the causation of ECC. Pediatricians should also keep in mind that anemia and malnutrition have a negative impact on children's dental health. Hence, Pediatricians and Pediatric dentist should work together in treating this health problem.

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通过机器学习算法探索幼儿龋齿、营养不良和贫血之间的关联。
研究目的本研究的目的是利用机器学习算法确定严重急性营养不良(SAM)儿童早期龋齿的患病率,以及与营养不良、贫血和 ECC 其他风险因素的关联等级:方法:针对 SAM 儿童(年龄 = 2 岁至 5 岁)开展了一项基于医院的预防和干预研究:随机树模型显示,年龄是预测ECC的最重要因素,预测重要性为98.75%,其次是母亲教育程度(29.20%)、血红蛋白水平(16.67%)、零食摄入频率(9.17%)、deft评分(8.75%)、零食摄入量(7.1%)、母乳喂养(6.25%)、严重急性营养不良(5.42%)、糖摄入频率(3.75%)和宗教信仰,预测重要性最低,为2.08%:贫血和营养不良在预测 ECC 方面起着重要作用,因此也是 ECC 的诱因。儿科医生也应牢记,贫血和营养不良对儿童的牙齿健康有负面影响。因此,儿科医生和儿科牙医应合作治疗这一健康问题。
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