Haiou Li, Vandana Sachdev, Xin Tian, My-Le Nguyen, Matthew Hsieh, Courtney Fitzhugh, Emily Limerick, Wynona Coles, Nancy Asomaning, Anna Conrey, Colin O Wu, Swee Lay Thein
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引用次数: 0
摘要
对于镰状细胞病(SCD)患者来说,与 HLA 匹配的同胞供者进行异基因造血细胞移植(HCT)仍是最成熟的治疗方案。然而,它并非没有风险,这就凸显了对风险分层系统的需求。利用结合临床和影像学变量的机器学习(ML)方法,我们确定了红细胞分布宽度和肾脏器官损伤是接受 HCT 的患者的重要风险因素。这种基于 ML 的算法与之前报道的预测 SCD 患者死亡率的方法类似,应适用于类似研究中的风险因素发现。
A machine learning-based workflow for predicting transplant outcomes in patients with sickle cell disease.
Allogeneic haematopoietic cell transplantation (HCT) with HLA-matched sibling donor remains the most established curative therapeutic option for patients with sickle cell disease (SCD). However, it is not without risks, highlighting the need for a risk stratification system. Utilizing a machine learning (ML) approach that combines clinical and imaging variables, we identified red cell distribution width and renal organ damage as important risk factors for patients undergoing HCT. This ML-based algorithm, similar to an approach previously reported for predicting mortality in patients with SCD, should be applicable to risk factor discovery in similar studies.
期刊介绍:
The British Journal of Haematology publishes original research papers in clinical, laboratory and experimental haematology. The Journal also features annotations, reviews, short reports, images in haematology and Letters to the Editor.