A Case-Based Reasoning Approach to Mental State Examination Using a Similarity Measure Based on Orthogonal Vector Projection

Irosh Fernando, F. Henskens
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引用次数: 3

Abstract

Mental state examination (MSE) involves assessing the overall severity of illness and also differentiating likely diagnoses. When it is performed on patients serially during the period of their illness, the consecutive estimates can serve as an important way to track their recovery. However, the traditional approach to mental state examination that uses clinician's subjective judgement and results in subjective estimates can be unreliable and prone to inconsistencies. Using the approach introduced in this paper, a case is represented as a vector of thirty five different clinical features, which are rated using a numerical scale according to the severity of each clinical feature. The vector length is used as a measure of the overall severity of the illness. The case base consists of one standard case for each of 6 diagnostic categories. Each standard case represents a typical case for its diagnostic category, with each clinical feature rated according to the maximum level of severity that can be expected for that category. Evaluation of a given clinical case, with clinical features as rated by a clinician with regard to the likely diagnoses involves measuring the similarity of the resulting case vector with the standard vectors in the case base. Whilst cosine similarity and Euclidean distance are alternative measures of similarity, a more clinically intuitive and accurate measure based on orthogonal vector projection is proposed. The orthogonal vector projection approach to case based assessment was evaluated using thirty different test cases representing six different common diagnostic categories. For each of the test cases similarity measures obtained using orthogonal vector projection were compared with measures obtained using cosine similarity and Euclidean distance. The results indicated that the orthogonal vector projection approach was able to differentiate both the diagnosis and severity of illness more accurately than the other two similarity measures. The proposed approach has the potential to be used as a standardised clinical tool for both establishing the diagnosis and severity of illness, and also measuring the recovery from illness. In particular, the estimates of recovery obtained from this approach can serve as an important index in healthcare economics.
基于正交向量投影相似性度量的心理状态测试案例推理方法
精神状态检查(MSE)包括评估疾病的总体严重程度以及区分可能的诊断。如果在患者患病期间连续对其进行评估,那么连续的评估结果可以作为跟踪患者康复情况的重要方法。然而,传统的精神状态检查方法使用临床医生的主观判断和主观估计的结果,可能是不可靠的,容易出现不一致。使用本文介绍的方法,将一个病例表示为35个不同临床特征的向量,根据每个临床特征的严重程度使用数值尺度对其进行评级。病媒长度被用来衡量疾病的总体严重程度。病例库由6个诊断类别中的每一个标准病例组成。每个标准病例代表其诊断类别的典型病例,每个临床特征根据该类别可预期的最大严重程度进行评级。根据临床医生对可能的诊断所评定的临床特征,对给定的临床病例进行评估,包括测量所得病例病媒与病例库中标准病媒的相似性。虽然余弦相似度和欧几里得距离是相似度的替代度量,但提出了一种基于正交向量投影的更直观和准确的临床度量。使用代表六种不同常见诊断类别的30个不同测试用例,对基于病例的评估的正交向量投影方法进行了评估。对于每个测试用例,使用正交向量投影获得的相似度度量与使用余弦相似度和欧几里得距离获得的度量进行了比较。结果表明,正交向量投影法能够比其他两种相似度方法更准确地区分疾病的诊断和严重程度。所提出的方法有可能被用作一种标准化的临床工具,既可以确定疾病的诊断和严重程度,也可以衡量疾病的康复情况。特别是,从这种方法中获得的恢复估计可以作为医疗保健经济学的重要指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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