Machine Learning-Based Prediction Models for Cognitive Decline Progression: A Comparative Study in Multilingual Settings Using Speech Analysis.

JAR life Pub Date : 2024-05-16 eCollection Date: 2024-01-01 DOI:10.14283/jarlife.2024.6
B Ceyhan, S Bek, T Önal-Süzek
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Abstract

Background: Mild cognitive impairment (MCI) is a condition commonly associated with dementia. Therefore, early prediction of progression from MCI to dementia is essential for preventing or alleviating cognitive decline. Given that dementia affects cognitive functions like language and speech, detecting disease progression through speech analysis can provide a cost-effective solution for patients and caregivers.

Design-participants: In our study, we examined spontaneous speech (SS) and written Mini Mental Status Examination (MMSE) scores from a 60-patient dataset obtained from the Mugla University Dementia Outpatient Clinic (MUDC) and a 153-patient dataset from the Alzheimer's Dementia Recognition through Spontaneous Speech (ADRess) challenge. Our study, for the first time, analyzed the impact of audio features extracted from SS in distinguishing between different degrees of cognitive impairment using both an Indo-European language and a Turkic language, which exhibit distinct word order, agglutination, noun cases, and grammatical markers.

Results: When each machine learning model was tested on its respective trained language, we attained a 95% accuracy using the random forest classifier on the ADRess dataset and a 94% accuracy on the MUDC dataset employing the multilayer perceptron (MLP) neural network algorithm. In our second experiment, we evaluated the effectiveness of each language-specific machine learning model on the dataset of the other language. We achieved accuracies of 72% for English and 76% for Turkish, respectively.

Conclusion: These findings underscore the cross-language potential of audio features for automated tracking of cognitive impairment progression in MCI patients, offering a convenient and cost-effective option for clinicians or patients.

基于机器学习的认知能力衰退预测模型:在多语言环境中使用语音分析的比较研究。
背景:轻度认知功能障碍(MCI)通常与痴呆症相关。因此,及早预测 MCI 向痴呆症的发展对于预防或缓解认知功能衰退至关重要。鉴于痴呆症会影响语言和言语等认知功能,通过言语分析检测疾病进展可为患者和护理人员提供一种经济有效的解决方案:在我们的研究中,我们检查了来自穆格拉大学痴呆症门诊(MUDC)的 60 名患者数据集和来自阿尔茨海默氏症痴呆症自发言语识别(ADRess)挑战赛的 153 名患者数据集的自发言语(SS)和迷你精神状态检查(MMSE)书面评分。我们的研究首次使用印欧语和突厥语分析了从自发语音中提取的音频特征对区分不同程度认知障碍的影响:当每个机器学习模型在各自的训练语言上进行测试时,我们在 ADRess 数据集上使用随机森林分类器达到了 95% 的准确率,在 MUDC 数据集上使用多层感知器 (MLP) 神经网络算法达到了 94% 的准确率。在第二个实验中,我们评估了每种特定语言的机器学习模型在另一种语言数据集上的有效性。英语和土耳其语的准确率分别为 72% 和 76%:这些研究结果凸显了音频特征在自动跟踪 MCI 患者认知障碍进展方面的跨语言潜力,为临床医生或患者提供了一种方便、经济的选择。
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