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Identifying relative Cut-Off Scores with Neural Networks for Interpretation of the Minnesota Living with Heart Failure Questionnaire

机译:用神经网络识别相对截止分数,以解释明尼苏达患者心力衰竭问卷

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BACKGROUND: Quality of life (QoL) is an important end point in heart failure (HF) studies. The Minnesota Living with Heart Failure questionnaire (MLHFQ) is the instrument most widely used to evaluate QoL in Heart Failure (HF) patients. It is a questionnaire containing 21 questions with scores ranging from 0 to 105. A best cut-off value for MLHFQ scores to identify those patients with good, moderate or poor QoL has not been determined. OBJECTIVE: To determine a cut-off score for the MLHFQ based on the neural network (NN) approach. These cut-off scores will help discriminate between HF patients having good, moderate or poor QoL. METHODS: This research was carried out in the context of a longitudinal cohort study of new patients attending specialized HF clinics in six participating centers in Quebec, Canada. Patients completed a questionnaire that included the MLHFQ. In addition to this scale, self-perceived health status and clinical information related to the severity of HF were obtained including: the New York Heart Association (NYHA) functional class, 6 minute walk test and survival status. We analyzed the database using NN and conventional statistical tools. The NN is a statistical program that recognizes clusters of MLHFQ and relates similar QoL measures to one another. Among the 531 eligible patients, 447 patients with complete questionnaires were used to build randomly two sets for training (learning set) and for testing (validation set) the NN. RESULTS: Participants had a mean age of 65 years and 24% were women. The median MLHFQ score was 45 (inter-quartile range: 27 to 64). NN identified 3 distinct clusters of MLHFQ that represent the full spectrum of possible scores on the MLHFQ. We estimated that a score of < 24 on the MLHFQ represents a good QoL, a score between 24 and 45 represents a moderate QoL, and a score > 45 represents a poor QoL. Validation with the different severity measures confirmed these categories. These cut-offs allowed us to reach a good total accuracy (91%). These cut-offs were strongly correlated with survival status (p= 0.004), self-perceived health status (p=0.0032), NYHA functional class (p<0.0001) and standardized 6 minutes walk test (p=0.05) CONCLUSION: The identification of three levels of MLHFQ should be useful in clinical decision making.
机译:背景:生活质量(QOL)是心力衰竭(HF)研究的重要终点。患有心力衰竭问卷(MLHFQ)的明尼苏达州是最广泛应用于评估心力衰竭(HF)患者的QoL的仪器。它是一个调查问卷,其中包含21个问题,分数范围为0到105. MLHFQ分数的最佳截止值,以确定尚未确定这些良好,中等或差的QOL患者。目的:基于神经网络(NN)方法确定MLHFQ的截止分数。这些截止得分将有助于区分具有良好,中等或贫乏QoL的HF患者。方法:该研究是在加拿大魁北克魁北克六参加中心的新患者的纵向队列的纵向队列研究中进行的。患者完成了包含MLHFQ的调查问卷。除了这种规模外,获得了与HF严重程度相关的自我感知的健康状况和临床信息,包括:纽约心脏协会(NYHA)功能级,6分钟的步行测试和生存状态。我们使用NN和常规统计工具分析了数据库。 NN是识别MLHFQ的集群的统计程序,并将相似的QOL措施彼此相关。在531名符合条件的患者中,447名完整问卷患者用于随机建立两套培训(学习集)和测试(验证集)NN。结果:参与者的平均年龄为65岁,24%是女性。中位数MLHFQ得分为45(间间距:27至64)。 NN识别3个MLHFQ的三种不同的MLHFQ簇,其代表MLHFQ上可能得分的全谱。我们估计,MLHFQ上的分数<24表示良好的QOL,24和45之间的分数代表了中等QoL,分数> 45代表了较差的QoL。使用不同的严重性措施验证确认了这些类别。这些截止值允许我们达到良好的总精度(91%)。这些截止与生存状态强烈相关(p = 0.004),自我感知的健康状况(p = 0.0032),Nyha功能等级(P <0.0001)和标准化的6分钟步道测试(P = 0.05)结论:识别三个层次的MLHFQ应在临床决策中有用。

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