DEPRESSION ASSESSMENT SYSTEM AND DEPRESSION ASSESSMENT METHOD BASED ON PHYSIOLOGICAL INFORMATION
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United States of America Patent
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app pub date -
Oct 29, 2015
filing date -
Jul 30, 2015
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Abstract
The present invention discloses a depression assessment system based on physiological information, comprising an information acquisition module, a signal processing module, a parameters calculation module, a feature selection module, a machine learning module and an output result module. The present invention further discloses a depression assessment method based on various physiological information, comprising the following steps: 1, processing electrocardiogram (ECG) signal and one or more of photoplethysmography (PPG) signal, electroencephalogram (EEG) signal, galvanic skin response (GSR)signal, electrogastrography (EGG) signal, electromyogram (EMG) signal, electrooculogram (EOG) signal, polysomnogram (PSG) signal and temperature signal, and calculating signal parameters; 2, normalizing the obtained signal parameters, and performing the feature selection on parameters set formed by the normalized signal parameters to obtain feature parameters set; and 3, performing machine learning by utilizing the obtained feature parameters set, and establishing a depression assessment mathematic model to assess the depression level by utilizing a relationship between the feature parameters set and the depression level. The present invention has the advantage that the subjectivity of the assessment by utilizing the depression rating scale can be avoided.
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- 15 United States
- 10 France
- 8 Japan
- 7 China
- 5 Korea
- 2 Other
Patent Owner(s)
Patent Owner | Address | |
---|---|---|
SOUTH CHINA UNIVERSITY OF TECHNOLOGY | GUANGZHOU TIANHE DISTRICT CITY SHIPAI SOUTH CHINA UNIVERSITY OF TECHNOLOGY GUANGZHOU CITY GUANGDONG PROVINCE | |
SHENZHEN SAYES MEDICAL TECHNOLOGY CO LTD | FOUR NO 81 COUNTRY GARDEN BUILDING IN FUTIAN DISTRICT CITY OF GUANGDONG PROVINCE SHENZHEN KING ROAD 518034 SHENZHEN CITY GUANGDONG PROVINCE 518034 |
International Classification(s)

- 2015 Application Filing Year
- A61B Class
- 16562 Applications Filed
- 12933 Patents Issued To-Date
- 78.09 % Issued To-Date
Inventor(s)
Inventor Name | Address | # of filed Patents | Total Citations |
---|---|---|---|
Chen, Xiuwen | Guangzhou City, CN | 2 | 4 |
# of filed Patents : 2 Total Citations : 4 | |||
Lv, Ruixue | Shenzhen City, CN | 1 | 4 |
# of filed Patents : 1 Total Citations : 4 | |||
Song, Chuanxu | Shenzhen City, CN | 1 | 4 |
# of filed Patents : 1 Total Citations : 4 | |||
Yang, Rongqian | Guangzhou City, CN | 1 | 4 |
# of filed Patents : 1 Total Citations : 4 |
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Patent Citation Ranking
- 4 Citation Count
- A61B Class
- 14.35 % this patent is cited more than
- 8 Age
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