Patterns and factors associated with dental service utilization among insured people: a data mining approach.

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS BMC Medical Informatics and Decision Making Pub Date : 2024-06-24 DOI:10.1186/s12911-024-02572-6
Zahra Pouraskari, Reza Yazdani, Maryam Khademi, Hossein Hessari
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Abstract

Background: Insurance databases contain valuable information related to the use of dental services. This data is instrumental in decision-making processes, enhancing risk assessment, and predicting outcomes. The objective of this study was to identify patterns and factors influencing the utilization of dental services among complementary insured individuals, employing a data mining methodology.

Methods: A secondary data analysis was conducted using a dental insurance dataset from Iran in 2022. The Cross-Industry Standard Process for Data Mining (CRISP-DM) was employed as a data mining approach for knowledge extraction from the database. The utilization of dental services was the outcome of interest, and independent variables were chosen based on the available information in the insurance dataset. Dental services were categorized into nine groups: diagnostic, preventive, periodontal, restorative, endodontic, prosthetic, implant, extraction/surgical, and orthodontic procedures. The independent variables included age, gender, family size, insurance history, franchise, insurance limit, and policyholder. A multinomial logistic regression model was utilized to investigate the factors associated with dental care utilization. All analyses were conducted using RapidMiner Version 2020.

Results: The analysis encompassed a total of 654,418 records, corresponding to 118,268 insured individuals. Predominantly, restorative treatments were the most utilized services, accounting for approximately 38% of all services, followed by diagnostic (18.35%) and endodontic (13.3%) care. Individuals aged between 36 and 60 years had the highest rate of utilization for any dental services. Additionally, families comprising three to four members, individuals with a one-year insurance history, people contracted with a 20% franchise, individuals with a high insurance limit, and insured individuals with a small policyholder, exhibited the highest rate of service usage compared to their counterparts. The regression model revealed that all independent variables were significantly associated with the use of dental services. However, the patterns of association varied among different service categories.

Conclusions: Restorative treatments emerged as the most frequently used dental services among insured individuals, followed by diagnostic and endodontic procedures. The pattern of service utilization was influenced by the characteristics of the insured individuals and attributes related to their insurance.

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与投保人使用牙科服务相关的模式和因素:一种数据挖掘方法。
背景:保险数据库包含与牙科服务使用相关的宝贵信息。这些数据有助于决策过程、加强风险评估和预测结果。本研究采用数据挖掘方法,旨在确定影响补充投保人使用牙科服务的模式和因素:方法:使用伊朗 2022 年的牙科保险数据集进行了二次数据分析。采用跨行业数据挖掘标准流程(CRISP-DM)作为数据挖掘方法,从数据库中提取知识。牙科服务的使用情况是研究的结果,自变量的选择基于保险数据集中的可用信息。牙科服务被分为九组:诊断、预防、牙周、修复、牙髓、修复、种植、拔牙/手术和正畸。自变量包括年龄、性别、家庭规模、保险历史、特许经营权、保险限额和投保人。多项式逻辑回归模型用于研究与牙科保健利用率相关的因素。所有分析均使用 RapidMiner Version 2020 进行:分析共包含 654,418 条记录,对应 118,268 名投保人。修复治疗是使用率最高的服务,约占所有服务的 38%,其次是诊断治疗(18.35%)和牙髓治疗(13.3%)。36 岁至 60 岁的人使用牙科服务的比例最高。此外,与同类人群相比,由三至四名成员组成的家庭、拥有一年保险历史的个人、拥有 20% 特许经营权的签约者、拥有较高保险额度的个人以及拥有小额投保人的受保人的服务使用率最高。回归模型显示,所有自变量都与牙科服务的使用有显著关联。然而,不同服务类别之间的关联模式各不相同:结论:修复治疗是投保人最常使用的牙科服务,其次是诊断和牙髓治疗。服务使用模式受投保人特征及其保险相关属性的影响。
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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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