Department of Rheumatology, Amrita Institute of Medical Sciences, Amrita Vishwa Vidyapeetham, Kochi, Kerala, India.
Department of General Medicine, Amrita Institute of Medical Sciences, Amrita Vishwa Vidyapeetham, Kochi, Kerala, India.
Adv Rheumatol. 2021 Nov 27;61(1):72. doi: 10.1186/s42358-021-00229-w.
In autoimmune inflammatory rheumatological diseases, routine cardiovascular risk assessment is becoming more important. As an increased cardiovascular disease (CVD) risk is recognized in patients with fibromyalgia (FM), a combination of traditional CVD risk assessment tool with Machine Learning (ML) predictive model could help to identify non-traditional CVD risk factors.
This study was a retrospective case-control study conducted at a quaternary care center in India. Female patients diagnosed with FM as per 2016 modified American College of Rheumatology 2010/2011 diagnostic criteria were enrolled; healthy age and gender-matched controls were obtained from Non-communicable disease Initiatives and Research at AMrita (NIRAM) study database. Firstly, FM cases and healthy controls were age-stratified into three categories of 18-39 years, 40-59 years, and ≥ 60 years. A 10 year and lifetime CVD risk was calculated in both cases and controls using the ASCVD calculator. Pearson chi-square test and Fisher's exact were used to compare the ASCVD risk scores of FM patients and controls across the age categories. Secondly, ML predictive models of CVD risk in FM patients were developed. A random forest algorithm was used to develop the predictive models with ASCVD 10 years and lifetime risk as target measures. Model predictive accuracy of the ML models was assessed by accuracy, f1-score, and Area Under 'receiver operating Curve' (AUC). From the final predictive models, we assessed risk factors that had the highest weightage for CVD risk in FM.
A total of 139 FM cases and 1820 controls were enrolled in the study. FM patients in the age group 40-59 years had increased lifetime CVD risk compared to the control group (OR = 1.56, p = 0.043). However, CVD risk was not associated with FM disease severity and disease duration as per the conventional statistical analysis. ML model for 10-year ASCVD risk had an accuracy of 95% with an f1-score of 0.67 and AUC of 0.825. ML model for the lifetime ASCVD risk had an accuracy of 72% with an f1-score of 0.79 and AUC of 0.713. In addition to the traditional risk factors for CVD, FM disease severity parameters were important contributors in the ML predictive models.
FM patients of the 40-59 years age group had increased lifetime CVD risk in our study. Although FM disease severity was not associated with high CVD risk as per the conventional statistical analysis of the data, it was among the highest contributor to ML predictive model for CVD risk in FM patients. This also highlights that ML can potentially help to bridge the gap of non-linear risk factor identification.
在自身免疫性炎症性风湿病中,常规心血管风险评估变得越来越重要。由于纤维肌痛(FM)患者的心血管疾病(CVD)风险增加,因此传统 CVD 风险评估工具与机器学习(ML)预测模型的结合可以帮助识别非传统 CVD 风险因素。
这是在印度一家四级护理中心进行的回顾性病例对照研究。本研究纳入了符合 2016 年改良美国风湿病学会 2010/2011 年诊断标准的 FM 女性患者;健康年龄和性别匹配的对照来自非传染性疾病倡议和 AMrita 研究数据库(NIRAM)。首先,根据年龄将 FM 病例和健康对照分为 18-39 岁、40-59 岁和≥60 岁三个年龄段。使用 ASCVD 计算器计算病例和对照者的 10 年和终生 CVD 风险。采用 Pearson 卡方检验和 Fisher 确切概率法比较不同年龄组 FM 患者和对照组的 ASCVD 风险评分。其次,建立 FM 患者 CVD 风险的 ML 预测模型。采用随机森林算法建立以 ASCVD 10 年和终生风险为目标的预测模型。采用准确性、f1 分数和接受者操作特征曲线下面积(AUC)评估 ML 模型的预测准确性。从最终的预测模型中,我们评估了 FM 患者 CVD 风险的最高权重因素。
本研究共纳入 139 例 FM 病例和 1820 例对照。40-59 岁年龄组的 FM 患者终生 CVD 风险高于对照组(OR=1.56,p=0.043)。然而,根据传统的统计学分析,CVD 风险与 FM 疾病严重程度和病程无关。10 年 ASCVD 风险 ML 模型的准确率为 95%,f1 得分为 0.67,AUC 为 0.825。终生 ASCVD 风险 ML 模型的准确率为 72%,f1 得分为 0.79,AUC 为 0.713。除了 CVD 的传统危险因素外,FM 疾病严重程度参数也是 ML 预测模型的重要贡献者。
在我们的研究中,40-59 岁年龄组的 FM 患者终生 CVD 风险增加。尽管根据数据的传统统计分析,FM 疾病严重程度与高 CVD 风险无关,但它是 FM 患者 CVD 风险 ML 预测模型中最高的贡献者之一。这也强调了 ML 可以潜在地帮助弥合非线性风险因素识别的差距。