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从转录的日语文本采访中提取痴呆症患者和护理人员的潜在需求:使用机器学习中的 Z 分数评估作为输入数据的词素选择的可用性的初步评估。

Extracting the latent needs of dementia patients and caregivers from transcribed interviews in japanese: an initial assessment of the availability of morpheme selection as input data with Z-scores in machine learning.

机构信息

National Institute of Health and Nutrition, National Institutes of Biomedical Innovation, Health and Nutrition, 3-17 Senriokashinmachi, Settsu, Osaka, 566-0002, Japan.

Department of Child Psychiatry and Psychiatry, Chiba University Hospital, Chiba, Japan.

出版信息

BMC Med Inform Decis Mak. 2023 Oct 5;23(1):203. doi: 10.1186/s12911-023-02303-3.

Abstract

BACKGROUND

Given the increasing number of dementia patients worldwide, a new method was developed for machine learning models to identify the 'latent needs' of patients and caregivers to facilitate patient/public involvement in societal decision making.

METHODS

Japanese transcribed interviews with 53 dementia patients and caregivers were used. A new morpheme selection method using Z-scores was developed to identify trends in describing the latent needs. F-measures with and without the new method were compared using three machine learning models.

RESULTS

The F-measures with the new method were higher for the support vector machine (SVM) (F-measure of 0.81 with the new method and F-measure of 0.79 without the new method for patients) and Naive Bayes (F-measure of 0.69 with the new method and F-measure of 0.67 without the new method for caregivers and F-measure of 0.75 with the new method and F-measure of 0.73 without the new method for patients).

CONCLUSION

A new scheme based on Z-score adaptation for machine learning models was developed to predict the latent needs of dementia patients and their caregivers by extracting data from interviews in Japanese. However, this study alone cannot be used to assign significance to the adaptation of the new method because of no enough size of sample dataset. Such pre-selection with Z-score adaptation from text data in machine learning models should be considered with more modified suitable methods in the near future.

摘要

背景

鉴于全球痴呆症患者数量的不断增加,开发了一种新的机器学习模型方法来识别患者和护理人员的“潜在需求”,以促进患者/公众参与社会决策。

方法

使用日本转录的 53 名痴呆症患者和护理人员的访谈。开发了一种使用 Z 分数的新的词素选择方法,以识别描述潜在需求的趋势。使用三种机器学习模型比较了带有和不带有新方法的 F 度量。

结果

对于支持向量机 (SVM),新方法的 F 度量更高(患者的新方法 F 度量为 0.81,无新方法 F 度量为 0.79),对于朴素贝叶斯,新方法的 F 度量更高(护理人员的新方法 F 度量为 0.69,无新方法 F 度量为 0.67;患者的新方法 F 度量为 0.75,无新方法 F 度量为 0.73)。

结论

开发了一种基于 Z 分数适应的新方案,通过从日语访谈中提取数据,预测痴呆症患者及其护理人员的潜在需求。然而,由于样本数据集不够大,仅本研究无法用于赋予新方法适应的重要性。在不久的将来,应该考虑在机器学习模型中使用从文本数据进行 Z 分数适应的这种预选,并采用更改进的合适方法。

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