Cargando…

A Markerless 2D Video, Facial Feature Recognition–Based, Artificial Intelligence Model to Assist With Screening for Parkinson Disease: Development and Usability Study

BACKGROUND: Masked face is a characteristic clinical manifestation of Parkinson disease (PD), but subjective evaluations from different clinicians often show low consistency owing to a lack of accurate detection technology. Hence, it is of great significance to develop methods to make monitoring eas...

Descripción completa

Detalles Bibliográficos
Autores principales: Hou, Xinyao, Zhang, Yu, Wang, Yanping, Wang, Xinyi, Zhao, Jiahao, Zhu, Xiaobo, Su, Jianbo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8663465/
https://www.ncbi.nlm.nih.gov/pubmed/34806994
http://dx.doi.org/10.2196/29554
_version_ 1784613643199971328
author Hou, Xinyao
Zhang, Yu
Wang, Yanping
Wang, Xinyi
Zhao, Jiahao
Zhu, Xiaobo
Su, Jianbo
author_facet Hou, Xinyao
Zhang, Yu
Wang, Yanping
Wang, Xinyi
Zhao, Jiahao
Zhu, Xiaobo
Su, Jianbo
author_sort Hou, Xinyao
collection PubMed
description BACKGROUND: Masked face is a characteristic clinical manifestation of Parkinson disease (PD), but subjective evaluations from different clinicians often show low consistency owing to a lack of accurate detection technology. Hence, it is of great significance to develop methods to make monitoring easier and more accessible. OBJECTIVE: The study aimed to develop a markerless 2D video, facial feature recognition–based, artificial intelligence (AI) model to assess facial features of PD patients and investigate how AI could help neurologists improve the performance of early PD diagnosis. METHODS: We collected 140 videos of facial expressions from 70 PD patients and 70 matched controls from 3 hospitals using a single 2D video camera. We developed and tested an AI model that performs masked face recognition of PD patients based on the acquisition and evaluation of facial features including geometric and texture features. Random forest, support vector machines, and k-nearest neighbor were used to train the model. The diagnostic performance of the AI model was compared with that of 5 neurologists. RESULTS: The experimental results showed that our AI models can achieve feasible and effective facial feature recognition ability to assist with PD diagnosis. The accuracy of PD diagnosis can reach 83% using geometric features. And with the model trained by random forest, the accuracy of texture features is up to 86%. When these 2 features are combined, an F1 value of 88% can be reached, where the random forest algorithm is used. Further, the facial features of patients with PD were not associated with the motor and nonmotor symptoms of PD. CONCLUSIONS: PD patients commonly exhibit masked facial features. Videos of a facial feature recognition–based AI model can provide a valuable tool to assist with PD diagnosis and the potential of realizing remote monitoring of the patient’s condition, especially during the COVID-19 pandemic.
format Online
Article
Text
id pubmed-8663465
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher JMIR Publications
record_format MEDLINE/PubMed
spelling pubmed-86634652022-01-05 A Markerless 2D Video, Facial Feature Recognition–Based, Artificial Intelligence Model to Assist With Screening for Parkinson Disease: Development and Usability Study Hou, Xinyao Zhang, Yu Wang, Yanping Wang, Xinyi Zhao, Jiahao Zhu, Xiaobo Su, Jianbo J Med Internet Res Original Paper BACKGROUND: Masked face is a characteristic clinical manifestation of Parkinson disease (PD), but subjective evaluations from different clinicians often show low consistency owing to a lack of accurate detection technology. Hence, it is of great significance to develop methods to make monitoring easier and more accessible. OBJECTIVE: The study aimed to develop a markerless 2D video, facial feature recognition–based, artificial intelligence (AI) model to assess facial features of PD patients and investigate how AI could help neurologists improve the performance of early PD diagnosis. METHODS: We collected 140 videos of facial expressions from 70 PD patients and 70 matched controls from 3 hospitals using a single 2D video camera. We developed and tested an AI model that performs masked face recognition of PD patients based on the acquisition and evaluation of facial features including geometric and texture features. Random forest, support vector machines, and k-nearest neighbor were used to train the model. The diagnostic performance of the AI model was compared with that of 5 neurologists. RESULTS: The experimental results showed that our AI models can achieve feasible and effective facial feature recognition ability to assist with PD diagnosis. The accuracy of PD diagnosis can reach 83% using geometric features. And with the model trained by random forest, the accuracy of texture features is up to 86%. When these 2 features are combined, an F1 value of 88% can be reached, where the random forest algorithm is used. Further, the facial features of patients with PD were not associated with the motor and nonmotor symptoms of PD. CONCLUSIONS: PD patients commonly exhibit masked facial features. Videos of a facial feature recognition–based AI model can provide a valuable tool to assist with PD diagnosis and the potential of realizing remote monitoring of the patient’s condition, especially during the COVID-19 pandemic. JMIR Publications 2021-11-19 /pmc/articles/PMC8663465/ /pubmed/34806994 http://dx.doi.org/10.2196/29554 Text en ©Xinyao Hou, Yu Zhang, Yanping Wang, Xinyi Wang, Jiahao Zhao, Xiaobo Zhu, Jianbo Su. Originally published in the Journal of Medical Internet Research (https://www.jmir.org), 19.11.2021. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in the Journal of Medical Internet Research, is properly cited. The complete bibliographic information, a link to the original publication on https://www.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Original Paper
Hou, Xinyao
Zhang, Yu
Wang, Yanping
Wang, Xinyi
Zhao, Jiahao
Zhu, Xiaobo
Su, Jianbo
A Markerless 2D Video, Facial Feature Recognition–Based, Artificial Intelligence Model to Assist With Screening for Parkinson Disease: Development and Usability Study
title A Markerless 2D Video, Facial Feature Recognition–Based, Artificial Intelligence Model to Assist With Screening for Parkinson Disease: Development and Usability Study
title_full A Markerless 2D Video, Facial Feature Recognition–Based, Artificial Intelligence Model to Assist With Screening for Parkinson Disease: Development and Usability Study
title_fullStr A Markerless 2D Video, Facial Feature Recognition–Based, Artificial Intelligence Model to Assist With Screening for Parkinson Disease: Development and Usability Study
title_full_unstemmed A Markerless 2D Video, Facial Feature Recognition–Based, Artificial Intelligence Model to Assist With Screening for Parkinson Disease: Development and Usability Study
title_short A Markerless 2D Video, Facial Feature Recognition–Based, Artificial Intelligence Model to Assist With Screening for Parkinson Disease: Development and Usability Study
title_sort markerless 2d video, facial feature recognition–based, artificial intelligence model to assist with screening for parkinson disease: development and usability study
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8663465/
https://www.ncbi.nlm.nih.gov/pubmed/34806994
http://dx.doi.org/10.2196/29554
work_keys_str_mv AT houxinyao amarkerless2dvideofacialfeaturerecognitionbasedartificialintelligencemodeltoassistwithscreeningforparkinsondiseasedevelopmentandusabilitystudy
AT zhangyu amarkerless2dvideofacialfeaturerecognitionbasedartificialintelligencemodeltoassistwithscreeningforparkinsondiseasedevelopmentandusabilitystudy
AT wangyanping amarkerless2dvideofacialfeaturerecognitionbasedartificialintelligencemodeltoassistwithscreeningforparkinsondiseasedevelopmentandusabilitystudy
AT wangxinyi amarkerless2dvideofacialfeaturerecognitionbasedartificialintelligencemodeltoassistwithscreeningforparkinsondiseasedevelopmentandusabilitystudy
AT zhaojiahao amarkerless2dvideofacialfeaturerecognitionbasedartificialintelligencemodeltoassistwithscreeningforparkinsondiseasedevelopmentandusabilitystudy
AT zhuxiaobo amarkerless2dvideofacialfeaturerecognitionbasedartificialintelligencemodeltoassistwithscreeningforparkinsondiseasedevelopmentandusabilitystudy
AT sujianbo amarkerless2dvideofacialfeaturerecognitionbasedartificialintelligencemodeltoassistwithscreeningforparkinsondiseasedevelopmentandusabilitystudy
AT houxinyao markerless2dvideofacialfeaturerecognitionbasedartificialintelligencemodeltoassistwithscreeningforparkinsondiseasedevelopmentandusabilitystudy
AT zhangyu markerless2dvideofacialfeaturerecognitionbasedartificialintelligencemodeltoassistwithscreeningforparkinsondiseasedevelopmentandusabilitystudy
AT wangyanping markerless2dvideofacialfeaturerecognitionbasedartificialintelligencemodeltoassistwithscreeningforparkinsondiseasedevelopmentandusabilitystudy
AT wangxinyi markerless2dvideofacialfeaturerecognitionbasedartificialintelligencemodeltoassistwithscreeningforparkinsondiseasedevelopmentandusabilitystudy
AT zhaojiahao markerless2dvideofacialfeaturerecognitionbasedartificialintelligencemodeltoassistwithscreeningforparkinsondiseasedevelopmentandusabilitystudy
AT zhuxiaobo markerless2dvideofacialfeaturerecognitionbasedartificialintelligencemodeltoassistwithscreeningforparkinsondiseasedevelopmentandusabilitystudy
AT sujianbo markerless2dvideofacialfeaturerecognitionbasedartificialintelligencemodeltoassistwithscreeningforparkinsondiseasedevelopmentandusabilitystudy