Using sustained vowels to identify patients with mild Parkinson’s disease in a Chinese dataset
Parkinson's disease (PD) is the second most common neurodegenerative disease and affects millions of people. Accurate diagnosis and subsequent treatment in the early stages can slow down disease progression. However, making an accurate diagnosis of PD at an early stage is challenging. Previous...
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Published in | Frontiers in aging neuroscience Vol. 16; p. 1377442 |
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Abstract | Parkinson's disease (PD) is the second most common neurodegenerative disease and affects millions of people. Accurate diagnosis and subsequent treatment in the early stages can slow down disease progression. However, making an accurate diagnosis of PD at an early stage is challenging. Previous studies have revealed that even for movement disorder specialists, it was difficult to differentiate patients with PD from healthy individuals until the average modified Hoehn-Yahr staging (mH&Y) reached 1.8. Recent researches have shown that dysarthria provides good indicators for computer-assisted diagnosis of patients with PD. However, few studies have focused on diagnosing patients with PD in the early stages, specifically those with mH&Y ≤ 1.5.
We used a machine learning algorithm to analyze voice features and developed diagnostic models for differentiating between healthy controls (HCs) and patients with PD, and for differentiating between HCs and patients with mild PD (mH&Y ≤ 1.5). The models were independently validated using separate datasets.
Our results demonstrate that, a remarkable diagnostic performance of the model in identifying patients with mild PD (mH&Y ≤ 1.5) and HCs, with area under the ROC curve 0.93 (95% CI: 0.851.00), accuracy 0.85, sensitivity 0.95, and specificity 0.75.
The results of our study are helpful for screening PD in the early stages in the community and primary medical institutions where there is a lack of movement disorder specialists and special equipment. |
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AbstractList | IntroductionParkinson’s disease (PD) is the second most common neurodegenerative disease and affects millions of people. Accurate diagnosis and subsequent treatment in the early stages can slow down disease progression. However, making an accurate diagnosis of PD at an early stage is challenging. Previous studies have revealed that even for movement disorder specialists, it was difficult to differentiate patients with PD from healthy individuals until the average modified Hoehn-Yahr staging (mH&Y) reached 1.8. Recent researches have shown that dysarthria provides good indicators for computer-assisted diagnosis of patients with PD. However, few studies have focused on diagnosing patients with PD in the early stages, specifically those with mH&Y ≤ 1.5.MethodWe used a machine learning algorithm to analyze voice features and developed diagnostic models for differentiating between healthy controls (HCs) and patients with PD, and for differentiating between HCs and patients with mild PD (mH&Y ≤ 1.5). The models were independently validated using separate datasets.ResultsOur results demonstrate that, a remarkable diagnostic performance of the model in identifying patients with mild PD (mH&Y ≤ 1.5) and HCs, with area under the ROC curve 0.93 (95% CI: 0.851.00), accuracy 0.85, sensitivity 0.95, and specificity 0.75.ConclusionThe results of our study are helpful for screening PD in the early stages in the community and primary medical institutions where there is a lack of movement disorder specialists and special equipment. Parkinson's disease (PD) is the second most common neurodegenerative disease and affects millions of people. Accurate diagnosis and subsequent treatment in the early stages can slow down disease progression. However, making an accurate diagnosis of PD at an early stage is challenging. Previous studies have revealed that even for movement disorder specialists, it was difficult to differentiate patients with PD from healthy individuals until the average modified Hoehn-Yahr staging (mH&Y) reached 1.8. Recent researches have shown that dysarthria provides good indicators for computer-assisted diagnosis of patients with PD. However, few studies have focused on diagnosing patients with PD in the early stages, specifically those with mH&Y ≤ 1.5. In this study, we used a machine learning algorithm to analyze voice features and developed diagnostic models for differentiating between HCs, patients with PD, and those with mild PD (mH&Y ≤ 1.5). The models were independently validated using separate datasets. Our results demonstrate that, a remarkable diagnostic performance of the model in identifying patients with mild PD (mH&Y ≤ 1.5) and HCs, with area under the ROC curve 0.93 (95% CI: 0.85–1.00), accuracy 0.85, sensitivity 0.95, and specificity 0.75. And we propose a paradigm for automatic detecting patients with PD by voice. The results of our study are helpful for screening PD in the early stages in the community and primary medical institutions where there is a lack of movement disorder specialists and special equipment. Parkinson's disease (PD) is the second most common neurodegenerative disease and affects millions of people. Accurate diagnosis and subsequent treatment in the early stages can slow down disease progression. However, making an accurate diagnosis of PD at an early stage is challenging. Previous studies have revealed that even for movement disorder specialists, it was difficult to differentiate patients with PD from healthy individuals until the average modified Hoehn-Yahr staging (mH&Y) reached 1.8. Recent researches have shown that dysarthria provides good indicators for computer-assisted diagnosis of patients with PD. However, few studies have focused on diagnosing patients with PD in the early stages, specifically those with mH&Y ≤ 1.5.IntroductionParkinson's disease (PD) is the second most common neurodegenerative disease and affects millions of people. Accurate diagnosis and subsequent treatment in the early stages can slow down disease progression. However, making an accurate diagnosis of PD at an early stage is challenging. Previous studies have revealed that even for movement disorder specialists, it was difficult to differentiate patients with PD from healthy individuals until the average modified Hoehn-Yahr staging (mH&Y) reached 1.8. Recent researches have shown that dysarthria provides good indicators for computer-assisted diagnosis of patients with PD. However, few studies have focused on diagnosing patients with PD in the early stages, specifically those with mH&Y ≤ 1.5.We used a machine learning algorithm to analyze voice features and developed diagnostic models for differentiating between healthy controls (HCs) and patients with PD, and for differentiating between HCs and patients with mild PD (mH&Y ≤ 1.5). The models were independently validated using separate datasets.MethodWe used a machine learning algorithm to analyze voice features and developed diagnostic models for differentiating between healthy controls (HCs) and patients with PD, and for differentiating between HCs and patients with mild PD (mH&Y ≤ 1.5). The models were independently validated using separate datasets.Our results demonstrate that, a remarkable diagnostic performance of the model in identifying patients with mild PD (mH&Y ≤ 1.5) and HCs, with area under the ROC curve 0.93 (95% CI: 0.851.00), accuracy 0.85, sensitivity 0.95, and specificity 0.75.ResultsOur results demonstrate that, a remarkable diagnostic performance of the model in identifying patients with mild PD (mH&Y ≤ 1.5) and HCs, with area under the ROC curve 0.93 (95% CI: 0.851.00), accuracy 0.85, sensitivity 0.95, and specificity 0.75.The results of our study are helpful for screening PD in the early stages in the community and primary medical institutions where there is a lack of movement disorder specialists and special equipment.ConclusionThe results of our study are helpful for screening PD in the early stages in the community and primary medical institutions where there is a lack of movement disorder specialists and special equipment. Parkinson's disease (PD) is the second most common neurodegenerative disease and affects millions of people. Accurate diagnosis and subsequent treatment in the early stages can slow down disease progression. However, making an accurate diagnosis of PD at an early stage is challenging. Previous studies have revealed that even for movement disorder specialists, it was difficult to differentiate patients with PD from healthy individuals until the average modified Hoehn-Yahr staging (mH&Y) reached 1.8. Recent researches have shown that dysarthria provides good indicators for computer-assisted diagnosis of patients with PD. However, few studies have focused on diagnosing patients with PD in the early stages, specifically those with mH&Y ≤ 1.5. We used a machine learning algorithm to analyze voice features and developed diagnostic models for differentiating between healthy controls (HCs) and patients with PD, and for differentiating between HCs and patients with mild PD (mH&Y ≤ 1.5). The models were independently validated using separate datasets. Our results demonstrate that, a remarkable diagnostic performance of the model in identifying patients with mild PD (mH&Y ≤ 1.5) and HCs, with area under the ROC curve 0.93 (95% CI: 0.851.00), accuracy 0.85, sensitivity 0.95, and specificity 0.75. The results of our study are helpful for screening PD in the early stages in the community and primary medical institutions where there is a lack of movement disorder specialists and special equipment. |
Author | Wang, Miao Li, Yifan Wu, Lingyu Yao, Jiarui Li, Fengzhu Gao, Zhongbao Zhao, Xingli Wang, Zhenfu Zhang, Xi Chen, Zhonglue Zheng, Yuan Ling, Yun Ren, Kang Lin, Shinuan Yin, Xi Tang, Ruonan |
AuthorAffiliation | 3 HUST-GYENNO CNS Intelligent Digital Medicine Technology Center , Wuhan , China 2 Gyenno Science Co., Ltd. , Shenzhen , China 1 Department of Geriatric Neurology, The Second Medical Center and National Clinical Research Center for Geriatric Disease, Chinese PLA General Hospital , Beijing , China |
AuthorAffiliation_xml | – name: 1 Department of Geriatric Neurology, The Second Medical Center and National Clinical Research Center for Geriatric Disease, Chinese PLA General Hospital , Beijing , China – name: 3 HUST-GYENNO CNS Intelligent Digital Medicine Technology Center , Wuhan , China – name: 2 Gyenno Science Co., Ltd. , Shenzhen , China |
Author_xml | – sequence: 1 givenname: Miao surname: Wang fullname: Wang, Miao – sequence: 2 givenname: Xingli surname: Zhao fullname: Zhao, Xingli – sequence: 3 givenname: Fengzhu surname: Li fullname: Li, Fengzhu – sequence: 4 givenname: Lingyu surname: Wu fullname: Wu, Lingyu – sequence: 5 givenname: Yifan surname: Li fullname: Li, Yifan – sequence: 6 givenname: Ruonan surname: Tang fullname: Tang, Ruonan – sequence: 7 givenname: Jiarui surname: Yao fullname: Yao, Jiarui – sequence: 8 givenname: Shinuan surname: Lin fullname: Lin, Shinuan – sequence: 9 givenname: Yuan surname: Zheng fullname: Zheng, Yuan – sequence: 10 givenname: Yun surname: Ling fullname: Ling, Yun – sequence: 11 givenname: Kang surname: Ren fullname: Ren, Kang – sequence: 12 givenname: Zhonglue surname: Chen fullname: Chen, Zhonglue – sequence: 13 givenname: Xi surname: Yin fullname: Yin, Xi – sequence: 14 givenname: Zhenfu surname: Wang fullname: Wang, Zhenfu – sequence: 15 givenname: Zhongbao surname: Gao fullname: Gao, Zhongbao – sequence: 16 givenname: Xi surname: Zhang fullname: Zhang, Xi |
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Keywords | early diagnosis voice Chinese database machine learning Parkinson’s disease |
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Snippet | Parkinson's disease (PD) is the second most common neurodegenerative disease and affects millions of people. Accurate diagnosis and subsequent treatment in the... IntroductionParkinson’s disease (PD) is the second most common neurodegenerative disease and affects millions of people. Accurate diagnosis and subsequent... |
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SubjectTerms | Accuracy Aging Neuroscience Algorithms Chinese database Cognitive ability Dementia Diagnosis Disease Dysarthria early diagnosis Ethics Hearing loss Illiteracy Machine learning Movement disorders Neurodegenerative diseases Parkinson's disease Patients Quality of life Speaking voice |
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Title | Using sustained vowels to identify patients with mild Parkinson’s disease in a Chinese dataset |
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