Development of short forms for screening children's dental caries and urgent treatment needs using item response theory and machine learning methods.
Di XiongMarvin MarcusCarl A MaidaYuetong LyuRon D HaysYan WangJie ShenVladimir W SpolskySteve Y LeeJames J CrallHonghu LiuPublished in: PloS one (2024)
The combination of Item Response Theory and Machine Learning algorithms yielded potentially useful screening instruments for both active caries and urgent treatment needs of children. The survey screening approach is relatively cost-effective and convenient when dealing with oral health assessment in large populations. Future studies are needed to further leverage the customize and refine the instruments based on the estimated item characteristics for specific subgroups of the populations to enhance predictive accuracy.