System Dynamics Modeling of Caries Severity States in Long-Term Care.

B Turton, J Griffith, J A Jones, S R Baker, A Singh, K Rawal, J Calabrese, M Henshaw
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Abstract

Dental caries among long-term care (LTC) residents is a persistent and complex problem driven by social and structural factors. Systems thinking may be useful in considering novel approaches to reducing disease. This study aimed to develop a system dynamics model to simulate the progression of dentate older adults in LTC through caries severity states and estimate the effects of 3 intervention scenarios on the progression of caries: preventive topical fluoride (TF), arrest of caries with silver diamine fluoride (SDF), and a combination of TF and SDF. Dentate older adults in LTC were categorized into 4 caries severity states by their number of untreated carious lesions. The model assumed that changes in severity states were consistent with incidence rates reported in the literature and available billing data for dental care and that individuals move in and out of the system by entering and exiting the facility or experiencing edentulism. For all scenarios, the proportion of dentate older adults in LTC with 1 or more untreated lesions stays stable, the distribution of disease shifts from a high severity state, and the system approaches equilibrium after 4 y. The TF intervention predicts minimal impacts on decreasing the proportion of dentate older adults with 1 or more untreated lesions (2.5% decrease), while the SDF intervention and the combination interventions were most disruptive. There was a 29.6% and 33.6% decrease, respectively. Given the specific population dynamics in LTC, these findings suggest that long-term (greater than 4 y) interventions should be designed to address both the management of existing lesions and their incidence. This system dynamics model allows researchers to render institution-specific data points from LTCs to estimate the effects of proposed interventions at the respective site.

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长期护理中龋病严重程度的系统动力学模型。
受社会和结构因素的影响,长期护理(LTC)居民的龋齿是一个长期存在的复杂问题。系统思维可能有助于考虑减少疾病的新方法。本研究旨在开发一个系统动力学模型,以模拟长期护理机构中患有牙齿的老年人龋齿严重程度的发展过程,并估算三种干预方案对龋齿发展的影响:预防性局部氟化物(TF)、用二胺氟化银抑制龋齿(SDF)以及 TF 和 SDF 的组合。根据未治疗龋损的数量,将患有牙齿龋齿的长者分为 4 种龋病严重程度。该模型假定严重程度状态的变化与文献报道的发病率和现有的牙科护理账单数据一致,并且个人通过进入和离开医疗机构或出现牙齿脱落而进出系统。在所有方案中,患有 1 个或 1 个以上未经治疗的牙科病变的长者在 LTC 中的比例保持稳定,疾病分布从高严重度状态转变,系统在 4 年后接近平衡。分别减少了 29.6% 和 33.6%。考虑到长期护理中特定的人口动态,这些研究结果表明,长期(超过 4 年)干预措施的设计应同时解决现有病变的管理和发病率问题。这种系统动力学模型使研究人员能够利用来自长者照护中心的特定机构数据点来估计拟议干预措施在相应地点的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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KDM6B-Mediated HADHA Demethylation/Lactylation Regulates Cementogenesis. System Dynamics Modeling of Caries Severity States in Long-Term Care. Terahertz Imaging Detects Oral Cariogenic Microbial Domains Characteristics. Explainable Deep Learning Approaches for Risk Screening of Periodontitis. Geo-Net: Geometry-Guided Pretraining for Tooth Point Cloud Segmentation.
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