Liu Yang, Dou Xuelin, Yan Xiaojing, Ma Shiyu, Ye Chong, Wang Xiaohong, Lu Jin
Department of Hematology, Peking University People's Hospital, No.11 Xizhimen South St, Xicheng District, Beijing, China.
Beijing Key Laboratory of Hematopoietic Stem Cell Transplantation, Peking University, Beijing, China.
Ann Hematol. 2024 Dec;103(12):5781-5798. doi: 10.1007/s00277-024-06015-0. Epub 2024 Oct 31.
Immunoglobulin light chain (AL) amyloidosis is a severe disorder caused by the accumulation of amyloid fibrils, leading to organ failure. Early diagnosis is crucial to prevent irreversible damage, yet it remains a challenge due to nonspecific symptoms that often appear later in the disease progression. A retrospective study analyzed data collected from 133 AL amyloidosis patients and 271 non-AL patients with similar symptoms but different diagnoses between January 1st, 2017, and September 30th, 2022. Demographic data and laboratory test results were collected. Subsequently, significant features were identified by both logistic regression and independent expert clinical ability. Eventually, logistic regression and four machine learning (ML) algorithms were employed to construct a diagnostic model, utilizing fivefold cross-validation and blind set testing to identify the optimal model. The study successfully identified nine independent predictors of AL amyloidosis patients with kidney or cardiac involvement, respectively. Two models were developed to identify key features that distinguish AL amyloidosis from nephrotic syndrome and hypertrophic cardiomyopathy, respectively. The light gradient boosting machine (LightGBM) model emerged as the most effective, demonstrating superior performance with the area under curve (AUC) of 0.90 in both models, alongside high sensitivity, specificity, and F1-score. This research highlights the potential of using a machine learning-based LightGBM model to facilitate early and accurate diagnosis of AL amyloidosis. The model's effectiveness suggests it could be a valuable tool in clinical settings, aiding in the timely identification of AL amyloidosis among patients with non-specific symptoms. Further validation in diverse populations is recommended to establish its universal applicability.
免疫球蛋白轻链(AL)淀粉样变性是一种由淀粉样原纤维积累引起的严重疾病,可导致器官衰竭。早期诊断对于预防不可逆损伤至关重要,但由于非特异性症状通常在疾病进展后期出现,因此仍然是一项挑战。一项回顾性研究分析了2017年1月1日至2022年9月30日期间从133例AL淀粉样变性患者和271例有相似症状但诊断不同的非AL患者收集的数据。收集了人口统计学数据和实验室检查结果。随后,通过逻辑回归和独立专家临床能力确定了显著特征。最终,采用逻辑回归和四种机器学习(ML)算法构建诊断模型,利用五折交叉验证和盲集测试来确定最佳模型。该研究成功确定了分别患有肾脏或心脏受累的AL淀粉样变性患者的九个独立预测因素。开发了两个模型,分别识别区分AL淀粉样变性与肾病综合征和肥厚型心肌病的关键特征。轻梯度提升机(LightGBM)模型被证明是最有效的,在两个模型中曲线下面积(AUC)均为0.90,表现出卓越的性能,同时具有高灵敏度、特异性和F1分数。本研究强调了使用基于机器学习的LightGBM模型促进AL淀粉样变性早期准确诊断的潜力。该模型的有效性表明它可能是临床环境中的一个有价值的工具,有助于在有非特异性症状的患者中及时识别AL淀粉样变性。建议在不同人群中进行进一步验证,以确定其普遍适用性。