Stojancic Rebecca Sofia, Subramaniam Arvind, Vuong Caroline, Utkarsh Kumar, Golbasi Nuran, Fernandez Olivia, Shah Nirmish
Duke Sickle Cell Comprehensive Care Unit, Department of Medicine, Division of Hematology, Duke University Hospital, Durham, NC, United States.
Brody School of Medicine, East Carolina University, Greenville, NC, United States.
JMIR Form Res. 2023 Mar 14;7:e45355. doi: 10.2196/45355.
Sickle cell disease (SCD) is a genetic red blood cell disorder associated with severe complications including chronic anemia, stroke, and vaso-occlusive crises (VOCs). VOCs are unpredictable, difficult to treat, and the leading cause of hospitalization. Recent efforts have focused on the use of mobile health technology to develop algorithms to predict pain in people with sickle cell disease. Combining the data collection abilities of a consumer wearable, such as the Apple Watch, and machine learning techniques may help us better understand the pain experience and find trends to predict pain from VOCs.
The aim of this study is to (1) determine the feasibility of using the Apple Watch to predict the pain scores in people with sickle cell disease admitted to the Duke University SCD Day Hospital, referred to as the Day Hospital, and (2) build and evaluate machine learning algorithms to predict the pain scores of VOCs with the Apple Watch.
Following approval of the institutional review board, patients with sickle cell disease, older than 18 years, and admitted to Day Hospital for a VOC between July 2021 and September 2021 were approached to participate in the study. Participants were provided with an Apple Watch Series 3, which is to be worn for the duration of their visit. Data collected from the Apple Watch included heart rate, heart rate variability (calculated), and calories. Pain scores and vital signs were collected from the electronic medical record. Data were analyzed using 3 different machine learning models: multinomial logistic regression, gradient boosting, and random forest, and 2 null models, to assess the accuracy of pain scores. The evaluation metrics considered were accuracy (F-score), area under the receiving operating characteristic curve, and root-mean-square error (RMSE).
We enrolled 20 patients with sickle cell disease, all of whom identified as Black or African American and consisted of 12 (60%) females and 8 (40%) males. There were 14 individuals diagnosed with hemoglobin type SS (70%). The median age of the population was 35.5 (IQR 30-41) years. The median time each individual spent wearing the Apple Watch was 2 hours and 17 minutes and a total of 15,683 data points were collected across the population. All models outperformed the null models, and the best-performing model was the random forest model, which was able to predict the pain scores with an accuracy of 84.5%, and a RMSE of 0.84.
The strong performance of the model in all metrics validates feasibility and the ability to use data collected from a noninvasive device, the Apple Watch, to predict the pain scores during VOCs. It is a novel and feasible approach and presents a low-cost method that could benefit clinicians and individuals with sickle cell disease in the treatment of VOCs.
镰状细胞病(SCD)是一种遗传性红细胞疾病,与包括慢性贫血、中风和血管闭塞性危机(VOCs)在内的严重并发症相关。VOCs不可预测、难以治疗,且是住院的主要原因。最近的努力集中在利用移动健康技术开发算法来预测镰状细胞病患者的疼痛。结合消费者可穿戴设备(如苹果手表)的数据收集能力和机器学习技术,可能有助于我们更好地理解疼痛体验,并找到预测VOCs引起疼痛的趋势。
本研究的目的是(1)确定使用苹果手表预测入住杜克大学SCD日间医院(以下简称日间医院)的镰状细胞病患者疼痛评分的可行性,以及(2)构建和评估使用苹果手表预测VOCs疼痛评分的机器学习算法。
在机构审查委员会批准后,邀请了2021年7月至2021年9月期间入住日间医院因VOCs而患病、年龄超过18岁的镰状细胞病患者参与研究。为参与者提供了一块苹果手表Series 3,在他们就诊期间佩戴。从苹果手表收集的数据包括心率、心率变异性(计算得出)和卡路里。从电子病历中收集疼痛评分和生命体征。使用3种不同的机器学习模型(多项逻辑回归、梯度提升和随机森林)以及2种空模型对数据进行分析,以评估疼痛评分的准确性。所考虑的评估指标包括准确性(F分数)、接受者操作特征曲线下面积和均方根误差(RMSE)。
我们招募了20名镰状细胞病患者,他们均为黑人或非裔美国人,其中12名(60%)为女性,8名(40%)为男性。有14人被诊断为血红蛋白类型SS(70%)。人群的中位年龄为35.5岁(四分位间距30 - 41岁)。每个人佩戴苹果手表的中位时间为2小时17分钟,整个人群共收集了15683个数据点。所有模型的表现均优于空模型,表现最佳的模型是随机森林模型,其能够以84.5%的准确率和0.84的RMSE预测疼痛评分。
该模型在所有指标上的出色表现验证了使用从无创设备苹果手表收集的数据来预测VOCs期间疼痛评分的可行性和能力。这是一种新颖且可行的方法,提供了一种低成本的方法,可能会使临床医生和镰状细胞病患者在治疗VOCs时受益。