Kim Bo Ram, Yoo Tae Keun, Kim Hong Kyu, Ryu Ik Hee, Kim Jin Kuk, Lee In Sik, Kim Jung Soo, Shin Dong-Hyeok, Kim Young-Sang, Kim Bom Taeck
Department of Ophthalmology, Hangil Eye Hospital, Incheon, Republic of Korea.
B&VIIT Eye Center, B2 GT Tower, 1317-23 Seocho-Dong, Seocho-Gu, Seoul, Republic of Korea.
EPMA J. 2022 Aug 8;13(3):367-382. doi: 10.1007/s13167-022-00292-3. eCollection 2022 Sep.
Sarcopenia is characterized by a gradual loss of skeletal muscle mass and strength with increased adverse outcomes. Recently, large-scale epidemiological studies have demonstrated a relationship between several chronic disorders and ocular pathological conditions using an oculomics approach. We hypothesized that sarcopenia can be predicted through eye examinations, without invasive tests or radiologic evaluations in the context of predictive, preventive, and personalized medicine (PPPM/3PM).
We analyzed data from the Korean National Health and Nutrition Examination Survey (KNHANES). The training set (80%, randomly selected from 2008 to 2010) data were used to construct the machine learning models. Internal (20%, randomly selected from 2008 to 2010) and external (from the KNHANES 2011) validation sets were used to assess the ability to predict sarcopenia. We included 8092 participants in the final dataset. Machine learning models (XGBoost) were trained on ophthalmological examinations and demographic factors to detect sarcopenia.
In the exploratory analysis, decreased levator function (odds ratio [OR], 1.41; value <0.001), cataracts (OR, 1.31; value = 0.013), and age-related macular degeneration (OR, 1.38; value = 0.026) were associated with an increased risk of sarcopenia in men. In women, an increased risk of sarcopenia was associated with blepharoptosis (OR, 1.23; value = 0.038) and cataracts (OR, 1.29; value = 0.010). The XGBoost technique showed areas under the receiver operating characteristic curves (AUCs) of 0.746 and 0.762 in men and women, respectively. The external validation achieved AUCs of 0.751 and 0.785 for men and women, respectively. For practical and fast hands-on experience with the predictive model for practitioners who may be willing to test the whole idea of sarcopenia prediction based on oculomics data, we developed a simple web-based calculator application (https://knhanesoculomics.github.io/sarcopenia) to predict the risk of sarcopenia and facilitate screening, based on the model established in this study.
Sarcopenia is treatable before the vicious cycle of sarcopenia-related deterioration begins. Therefore, early identification of individuals at a high risk of sarcopenia is essential in the context of PPPM. Our oculomics-based approach provides an effective strategy for sarcopenia prediction. The proposed method shows promise in significantly increasing the number of patients diagnosed with sarcopenia, potentially facilitating earlier intervention. Through patient oculometric monitoring, various pathological factors related to sarcopenia can be simultaneously analyzed, and doctors can provide personalized medical services according to each cause. Further studies are needed to confirm whether such a prediction algorithm can be used in real-world clinical settings to improve the diagnosis of sarcopenia.
The online version contains supplementary material available at 10.1007/s13167-022-00292-3.
肌肉减少症的特征是骨骼肌质量和力量逐渐丧失,不良后果增加。最近,大规模流行病学研究使用眼科学方法证明了几种慢性疾病与眼部病理状况之间的关系。我们假设,在预测、预防和个性化医疗(PPPM/3PM)的背景下,无需进行侵入性检查或放射学评估,通过眼部检查即可预测肌肉减少症。
我们分析了韩国国家健康与营养检查调查(KNHANES)的数据。训练集(80%,从2008年至2010年随机选取)数据用于构建机器学习模型。内部验证集(20%,从2008年至2010年随机选取)和外部验证集(来自2011年的KNHANES)用于评估预测肌肉减少症的能力。最终数据集中纳入了8092名参与者。基于眼科检查和人口统计学因素训练机器学习模型(XGBoost)以检测肌肉减少症。
在探索性分析中,男性提上睑肌功能下降(比值比[OR],1.41;P值<0.001)、白内障(OR,1.31;P值=0.013)和年龄相关性黄斑变性(OR,1.38;P值=0.026)与肌肉减少症风险增加相关。在女性中,肌肉减少症风险增加与上睑下垂(OR,1.23;P值=0.038)和白内障(OR,1.29;P值=0.010)相关。XGBoost技术在男性和女性中的受试者工作特征曲线下面积(AUC)分别为0.746和0.762。外部验证在男性和女性中的AUC分别为0.751和0.785。为了让可能愿意基于眼科学数据测试肌肉减少症预测整体思路的从业者获得实用且快速的实践经验,我们开发了一个简单的基于网络的计算器应用程序(https://knhanesoculomics.github.io/sarcopenia),以根据本研究建立的模型预测肌肉减少症风险并促进筛查。
在与肌肉减少症相关的恶化恶性循环开始之前,肌肉减少症是可治疗的。因此,在PPPM背景下,早期识别肌肉减少症高危个体至关重要。我们基于眼科学的方法为肌肉减少症预测提供了一种有效策略。所提出的方法有望显著增加被诊断为肌肉减少症的患者数量,可能促进更早的干预。通过对患者进行眼测量监测,可以同时分析与肌肉减少症相关的各种病理因素,医生可以根据每种病因提供个性化医疗服务。需要进一步研究以确认这种预测算法是否可用于实际临床环境中以改善肌肉减少症的诊断。
在线版本包含可在10.1007/s13167-022-00292-3获取的补充材料。