Using voice recognition and machine learning techniques for detecting patient-reported outcomes from conversational voice in palliative care patients.

IF 1.7 4区 医学 Q2 NURSING
Lei Dong, Hideyuki Hirayama, XueJiao Zheng, Kento Masukawa, Mitsunori Miyashita
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引用次数: 0

Abstract

Aim: Patient-reported outcome measures (PROMs) are increasingly used in palliative care to evaluate patients' symptoms and conditions. Healthcare providers often collect PROMs through conversations. However, the manual entry of these data into electronic medical records can be burdensome for healthcare providers. Voice recognition technology has been explored as a potential solution for alleviating this burden. However, research on voice recognition technology for palliative care is lacking. This study aimed to verify the use of voice recognition and machine learning to automatically evaluate PROMs using clinical conversation voice data.

Methods: We recruited 100 home-based palliative care patients from February to May 2023, conducted interviews using the Integrated Palliative Care Outcome Scale (IPOS), and transcribed their voice data using an existing voice recognition tool. We calculated the recognition rate and developed a machine learning model for symptom detection. Model performance was primarily evaluated using the F1 score, harmonic mean of the model's positive predictive value, and recall.

Results: The mean age of the patients was 80.6 years (SD, 10.8 years), and 34.0% were men. Thirteen patients had cancer, and 87 did not. The patient voice recognition rate of 55.6% (SD, 12.1%) was significantly lower than the overall recognition rate of 76.1% (SD, 6.4%). The F1 scores for the five total symptoms ranged from 0.31 to 0.46.

Conclusion: Although further improvements are necessary to enhance our model's performance, this study provides valuable insights into voice recognition and machine learning in clinical settings. We expect our findings will reduce the burden of recording PROMs on healthcare providers, increasing the wider use of PROMs.

使用语音识别和机器学习技术来检测姑息治疗患者会话语音的患者报告结果。
目的:患者报告的结果测量(PROMs)越来越多地用于姑息治疗来评估患者的症状和状况。医疗保健提供者通常通过对话收集prom。但是,将这些数据手动输入到电子医疗记录中对于医疗保健提供者来说是一项繁重的工作。语音识别技术已被探索作为减轻这一负担的潜在解决方案。然而,语音识别技术在姑息治疗方面的研究还很缺乏。本研究旨在验证使用语音识别和机器学习来使用临床对话语音数据自动评估prom。方法:我们于2023年2月至5月招募了100名家庭姑息治疗患者,使用综合姑息治疗结局量表(IPOS)进行访谈,并使用现有的语音识别工具转录他们的语音数据。我们计算了识别率,并开发了一个用于症状检测的机器学习模型。模型性能主要使用F1分数、模型正预测值的调和平均值和召回率来评估。结果:患者平均年龄80.6岁(SD, 10.8岁),男性占34.0%。13名患者患有癌症,87名没有。患者语音识别率为55.6% (SD, 12.1%),明显低于整体识别率76.1% (SD, 6.4%)。5种症状的F1评分范围为0.31 ~ 0.46。结论:虽然需要进一步改进以提高模型的性能,但本研究为临床环境中的语音识别和机器学习提供了有价值的见解。我们期望我们的研究结果将减轻医疗保健提供者记录PROMs的负担,增加PROMs的广泛使用。
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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来源期刊
CiteScore
4.10
自引率
0.00%
发文量
55
审稿时长
>12 weeks
期刊介绍: The Japan Journal of Nursing Science is the official English language journal of the Japan Academy of Nursing Science. The purpose of the Journal is to provide a mechanism to share knowledge related to improving health care and promoting the development of nursing. The Journal seeks original manuscripts reporting scholarly work on the art and science of nursing. Original articles may be empirical and qualitative studies, review articles, methodological articles, brief reports, case studies and letters to the Editor. Please see Instructions for Authors for detailed authorship qualification requirement.
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