鉴别器
人工智能
试验装置
机器学习
射血分数
灰色(单位)
心力衰竭
支持向量机
约束(计算机辅助设计)
模棱两可
计算机科学
数学
医学
算法
心脏病学
核医学
电信
几何学
探测器
程序设计语言
作者
Amparo Alonso‐Betanzos,Verónica Bolón‐Canedo,Guy R. Heyndrickx,Peter L. M. Kerkhof
摘要
Heart failure (HF) manifests as at least two subtypes. The current paradigm distinguishes the two by using both the metric ejection fraction (EF) and a constraint for end-diastolic volume. About half of all HF patients exhibit preserved EF. In contrast, the classical type of HF shows a reduced EF. Common practice sets the cut-off point often at or near EF = 50%, thus defining a linear divider. However, a rationale for this safe choice is lacking, while the assumption regarding applicability of strict linearity has not been justified. Additionally, some studies opt for eliminating patients from consideration for HF if 40 < EF < 50% (gray zone). Thus, there is a need for documented classification guidelines, solving gray zone ambiguity and formulating crisp delineation of transitions between phenotypes.
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