骨髓增生异常综合征预后的发展前景。

Clinical Hematology International Pub Date : 2020-06-01 Epub Date: 2020-04-19 DOI:10.2991/chi.d.200408.001
Jacob Shreve, Aziz Nazha
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引用次数: 5

摘要

骨髓增生异常综合征(MDSs)是一种潜在的破坏性单克隆造血偏差,可导致骨髓发育不良和可变细胞减少。预测疾病进展的严重程度和接受急性粒细胞白血病转化的可能性是治疗策略的基础。一些患者属于低风险队列,最好通过保守的支持性护理进行管理,而另一些患者则属于高风险队列,需要通过造血细胞移植或低甲基化剂给药进行决定性治疗。MDS预后的风险评分系统传统上基于核型特征和临床因素,这些因素可从图表审查中获得,并且验证通常在新发MDS患者身上进行。然而,回顾性分析发现,很大一部分患者的风险分层不正确。在这篇综述中,对最常用的评分系统进行了评估,并确定了其中的陷阱。然后探索个人基因组学和机器学习等新兴技术在MDS风险建模中的有效性。讨论了临床采用人工智能衍生模型的障碍,重点是旨在提高模型可解释性和临床相关性的方法。最后,提出了一套指导性建议,以最佳地设计一个准确且普遍适用的MDS预后模型,该模型得到了20多年来对传统评分系统性能的观察,以及创建混合基因组临床评分系统的现代努力的支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Evolving Landscape of Myelodysplastic Syndrome Prognostication.

Myelodysplastic syndromes (MDSs) are potentially devastating monoclonal deviations of hematopoiesis that lead to bone marrow dysplasia and variable cytopenias. Predicting severity of disease progression and likelihood to undergo acute myeloid leukemia transformation is the basis of treatment strategy. Some patients belong to a low-risk cohort best managed with conservative supportive care, whereas others are included in a high-risk cohort that requires decisive therapy with hematopoietic cell transplantation or hypomethylating agent administration. Risk scoring systems for MDS prognostication were traditionally based on karyotype characteristics and clinical factors readily available from chart review, and validation was typically conducted on de novo MDS patients. However, retrospective analysis found a large subset of patients incorrectly risk-stratified. In this review, the most commonly used scoring systems are evaluated, and pitfalls therein are identified. Emerging technologies such as personal genomics and machine learning are then explored for efficacy in MDS risk modeling. Barriers to clinical adoption of artificial intelligence-derived models are discussed, with focus on approaches meant to increase model interpretability and clinical relevance. Finally, a guiding set of recommendations is proposed for best designing an accurate and universally applicable prognostic model for MDS, which is supported by more than 20 years of observation of traditional scoring system performance, as well as modern efforts in creating hybrid genomic-clinical scoring systems.

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