Wen Yen-Hsia, Wu Shihn-Sheng, Lin Chun-Hung Richard, Tsai Jui-Hsiu, Yang Pinchen, Chang Yang-Pei, Tseng Kuan-Hua
From the School of Pharmacy, College of Pharmacy, Kaohsiung Medical University (Y-HW, S-SW); Department of Psychiatry (J-HT) and Department of Neurology (Y-PC), Kaohsiung Municipal Ta-Tung Hospital, Kaohsiung Medical University; Department of Psychiatry, Kaohsiung Medical University Hospital, Kaohsiung Medical University (PY); and Department of Computer Science and Engineering, National Sun Yat-sen University (C-HRL, K-HT), Kaohsiung, Taiwan.
Medicine (Baltimore). 2016 May;95(21):e3658. doi: 10.1097/MD.0000000000003658.
Dementia is one of the most disabling and burdensome health conditions worldwide. In this study, we identified new potential risk factors for dementia from nationwide longitudinal population-based data by using Bayesian statistics.We first tested the consistency of the results obtained using Bayesian statistics with those obtained using classical frequentist probability for 4 recognized risk factors for dementia, namely severe head injury, depression, diabetes mellitus, and vascular diseases. Then, we used Bayesian statistics to verify 2 new potential risk factors for dementia, namely hearing loss and senile cataract, determined from the Taiwan's National Health Insurance Research Database.We included a total of 6546 (6.0%) patients diagnosed with dementia. We observed older age, female sex, and lower income as independent risk factors for dementia. Moreover, we verified the 4 recognized risk factors for dementia in the older Taiwanese population; their odds ratios (ORs) ranged from 3.469 to 1.207. Furthermore, we observed that hearing loss (OR = 1.577) and senile cataract (OR = 1.549) were associated with an increased risk of dementia.We found that the results obtained using Bayesian statistics for assessing risk factors for dementia, such as head injury, depression, DM, and vascular diseases, were consistent with those obtained using classical frequentist probability. Moreover, hearing loss and senile cataract were found to be potential risk factors for dementia in the older Taiwanese population. Bayesian statistics could help clinicians explore other potential risk factors for dementia and for developing appropriate treatment strategies for these patients.
痴呆症是全球最具致残性和负担性的健康状况之一。在本研究中,我们通过使用贝叶斯统计方法,从全国基于人群的纵向数据中识别出痴呆症的新潜在风险因素。我们首先测试了使用贝叶斯统计方法获得的结果与使用经典频率概率方法获得的结果对于4种已确认的痴呆症风险因素(即重度头部损伤、抑郁症、糖尿病和血管疾病)的一致性。然后,我们使用贝叶斯统计方法来验证从台湾国民健康保险研究数据库中确定的2种痴呆症新潜在风险因素,即听力损失和老年性白内障。我们共纳入了6546名(6.0%)被诊断为痴呆症的患者。我们观察到年龄较大、女性和低收入是痴呆症的独立风险因素。此外,我们在台湾老年人群中验证了4种已确认的痴呆症风险因素;它们的优势比(OR)范围为3.469至1.207。此外,我们观察到听力损失(OR = 1.577)和老年性白内障(OR = 1.549)与痴呆症风险增加相关。我们发现,使用贝叶斯统计方法评估痴呆症风险因素(如头部损伤、抑郁症、糖尿病和血管疾病)所获得的结果与使用经典频率概率方法获得的结果一致。此外,听力损失和老年性白内障被发现是台湾老年人群中痴呆症的潜在风险因素。贝叶斯统计方法可以帮助临床医生探索痴呆症的其他潜在风险因素,并为这些患者制定适当的治疗策略。