Development of medical device software for the screening and assessment of depression severity using data collected from a wristband-type wearable device: SWIFT study protocol

Few biomarkers can be used clinically to diagnose and assess the severity of depression. However, a decrease in activity and sleep efficiency can be observed in depressed patients, and recent technological developments have made it possible to measure these changes. In addition, physiological change...

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Published inFrontiers in psychiatry Vol. 13; p. 1025517
Main Authors Kishimoto, Taishiro, Kinoshita, Shotaro, Kikuchi, Toshiaki, Bun, Shogyoku, Kitazawa, Momoko, Horigome, Toshiro, Tazawa, Yuki, Takamiya, Akihiro, Hirano, Jinichi, Mimura, Masaru, Liang, Kuo-ching, Koga, Norihiro, Ochiai, Yasushi, Ito, Hiromi, Miyamae, Yumiko, Tsujimoto, Yuiko, Sakuma, Kei, Kida, Hisashi, Miura, Gentaro, Kawade, Yuko, Goto, Akiko, Yoshino, Fumihiro
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LanguageEnglish
Published Switzerland Frontiers Media S.A 21.12.2022
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Abstract Few biomarkers can be used clinically to diagnose and assess the severity of depression. However, a decrease in activity and sleep efficiency can be observed in depressed patients, and recent technological developments have made it possible to measure these changes. In addition, physiological changes, such as heart rate variability, can be used to distinguish depressed patients from normal persons; these parameters can be used to improve diagnostic accuracy. The proposed research will explore and construct machine learning models capable of detecting depressive episodes and assessing their severity using data collected from wristband-type wearable devices. Patients with depressive symptoms and healthy subjects will wear a wristband-type wearable device for 7 days; data on triaxial acceleration, pulse rate, skin temperature, and ultraviolet light will be collected. On the seventh day of wearing, the severity of depressive episodes will be assessed using Structured Clinical Interview for DSM-5 (SCID-5), Hamilton Depression Rating Scale (HAMD), and other scales. Data for up to five 7-day periods of device wearing will be collected from each subject. Using wearable device data associated with clinical symptoms as supervisory data, we will explore and build a machine learning model capable of identifying the presence or absence of depressive episodes and predicting the HAMD scores for an unknown data set. Our machine learning model could improve the clinical diagnosis and management of depression through the use of a wearable medical device. [https://jrct.niph.go.jp/latest-detail/jRCT1031210478], identifier [jRCT1031210478].
AbstractList Few biomarkers can be used clinically to diagnose and assess the severity of depression. However, a decrease in activity and sleep efficiency can be observed in depressed patients, and recent technological developments have made it possible to measure these changes. In addition, physiological changes, such as heart rate variability, can be used to distinguish depressed patients from normal persons; these parameters can be used to improve diagnostic accuracy. The proposed research will explore and construct machine learning models capable of detecting depressive episodes and assessing their severity using data collected from wristband-type wearable devices. Patients with depressive symptoms and healthy subjects will wear a wristband-type wearable device for 7 days; data on triaxial acceleration, pulse rate, skin temperature, and ultraviolet light will be collected. On the seventh day of wearing, the severity of depressive episodes will be assessed using Structured Clinical Interview for DSM-5 (SCID-5), Hamilton Depression Rating Scale (HAMD), and other scales. Data for up to five 7-day periods of device wearing will be collected from each subject. Using wearable device data associated with clinical symptoms as supervisory data, we will explore and build a machine learning model capable of identifying the presence or absence of depressive episodes and predicting the HAMD scores for an unknown data set. Our machine learning model could improve the clinical diagnosis and management of depression through the use of a wearable medical device. [https://jrct.niph.go.jp/latest-detail/jRCT1031210478], identifier [jRCT1031210478].
Few biomarkers can be used clinically to diagnose and assess the severity of depression. However, a decrease in activity and sleep efficiency can be observed in depressed patients, and recent technological developments have made it possible to measure these changes. In addition, physiological changes, such as heart rate variability, can be used to distinguish depressed patients from normal persons; these parameters can be used to improve diagnostic accuracy. The proposed research will explore and construct machine learning models capable of detecting depressive episodes and assessing their severity using data collected from wristband-type wearable devices.IntroductionFew biomarkers can be used clinically to diagnose and assess the severity of depression. However, a decrease in activity and sleep efficiency can be observed in depressed patients, and recent technological developments have made it possible to measure these changes. In addition, physiological changes, such as heart rate variability, can be used to distinguish depressed patients from normal persons; these parameters can be used to improve diagnostic accuracy. The proposed research will explore and construct machine learning models capable of detecting depressive episodes and assessing their severity using data collected from wristband-type wearable devices.Patients with depressive symptoms and healthy subjects will wear a wristband-type wearable device for 7 days; data on triaxial acceleration, pulse rate, skin temperature, and ultraviolet light will be collected. On the seventh day of wearing, the severity of depressive episodes will be assessed using Structured Clinical Interview for DSM-5 (SCID-5), Hamilton Depression Rating Scale (HAMD), and other scales. Data for up to five 7-day periods of device wearing will be collected from each subject. Using wearable device data associated with clinical symptoms as supervisory data, we will explore and build a machine learning model capable of identifying the presence or absence of depressive episodes and predicting the HAMD scores for an unknown data set.Methods and analysisPatients with depressive symptoms and healthy subjects will wear a wristband-type wearable device for 7 days; data on triaxial acceleration, pulse rate, skin temperature, and ultraviolet light will be collected. On the seventh day of wearing, the severity of depressive episodes will be assessed using Structured Clinical Interview for DSM-5 (SCID-5), Hamilton Depression Rating Scale (HAMD), and other scales. Data for up to five 7-day periods of device wearing will be collected from each subject. Using wearable device data associated with clinical symptoms as supervisory data, we will explore and build a machine learning model capable of identifying the presence or absence of depressive episodes and predicting the HAMD scores for an unknown data set.Our machine learning model could improve the clinical diagnosis and management of depression through the use of a wearable medical device.DiscussionOur machine learning model could improve the clinical diagnosis and management of depression through the use of a wearable medical device.[https://jrct.niph.go.jp/latest-detail/jRCT1031210478], identifier [jRCT1031210478].Clinical trial registration[https://jrct.niph.go.jp/latest-detail/jRCT1031210478], identifier [jRCT1031210478].
IntroductionFew biomarkers can be used clinically to diagnose and assess the severity of depression. However, a decrease in activity and sleep efficiency can be observed in depressed patients, and recent technological developments have made it possible to measure these changes. In addition, physiological changes, such as heart rate variability, can be used to distinguish depressed patients from normal persons; these parameters can be used to improve diagnostic accuracy. The proposed research will explore and construct machine learning models capable of detecting depressive episodes and assessing their severity using data collected from wristband-type wearable devices.Methods and analysisPatients with depressive symptoms and healthy subjects will wear a wristband-type wearable device for 7 days; data on triaxial acceleration, pulse rate, skin temperature, and ultraviolet light will be collected. On the seventh day of wearing, the severity of depressive episodes will be assessed using Structured Clinical Interview for DSM-5 (SCID-5), Hamilton Depression Rating Scale (HAMD), and other scales. Data for up to five 7-day periods of device wearing will be collected from each subject. Using wearable device data associated with clinical symptoms as supervisory data, we will explore and build a machine learning model capable of identifying the presence or absence of depressive episodes and predicting the HAMD scores for an unknown data set.DiscussionOur machine learning model could improve the clinical diagnosis and management of depression through the use of a wearable medical device.Clinical trial registration[https://jrct.niph.go.jp/latest-detail/jRCT1031210478], identifier [jRCT1031210478].
Author Koga, Norihiro
Takamiya, Akihiro
Tsujimoto, Yuiko
Tazawa, Yuki
Mimura, Masaru
Ochiai, Yasushi
Kawade, Yuko
Kishimoto, Taishiro
Kitazawa, Momoko
Sakuma, Kei
Horigome, Toshiro
Kikuchi, Toshiaki
Ito, Hiromi
Miura, Gentaro
Kinoshita, Shotaro
Hirano, Jinichi
Goto, Akiko
Liang, Kuo-ching
Kida, Hisashi
Yoshino, Fumihiro
Miyamae, Yumiko
Bun, Shogyoku
AuthorAffiliation 12 Nagatsuta Ikoinomori Clinic , Yokohama , Japan
11 Department of Psychiatry, Tsurugaoka Garden Hospital , Tokyo , Japan
6 Office for Open Innovation, Keio University , Tokyo , Japan
2 i2medical LLC , Kawasaki , Japan
3 Graduate School of Interdisciplinary Information Studies, The University of Tokyo , Tokyo , Japan
10 Oizumi Hospital , Tokyo , Japan
1 Hills Joint Research Laboratory for Future Preventive Medicine and Wellness, Keio University School of Medicine , Tokyo , Japan
8 Frontier Business Office, Sumitomo Pharma Co., Ltd. , Tokyo , Japan
9 Asaka Hospital , Koriyama , Japan
4 Department of Neuropsychiatry, Keio University School of Medicine , Tokyo , Japan
5 Sato Hospital , Yamagata , Japan
7 Akasaka Clinic , Tokyo , Japan
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Cites_doi 10.1016/j.jad.2006.10.007
10.1038/s41746-020-00324-0
10.2196/jmir.7006
10.1016/j.jad.2019.04.087
10.1016/j.amepre.2013.08.001
10.1017/S0033291718001307
10.7326/M17-1495
10.1038/mp.2012.105
10.1007/s11948-017-9872-8
10.1016/j.jad.2012.07.001
10.1002/da.22355
10.2196/mhealth.9691
10.1016/j.heliyon.2020.e03274
10.3389/fpsyt.2014.00080
10.1088/1361-6579/aabf64
10.1371/journal.pdig.0000001
10.1016/S0165-0327(02)00072-1
10.1038/s41746-019-0132-y
10.1037/hea0000312
10.3389/fpsyt.2021.672347
10.1016/S2215-0366(15)00268-0
10.1111/jcpp.12520
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Copyright Copyright © 2022 Kishimoto, Kinoshita, Kikuchi, Bun, Kitazawa, Horigome, Tazawa, Takamiya, Hirano, Mimura, Liang, Koga, Ochiai, Ito, Miyamae, Tsujimoto, Sakuma, Kida, Miura, Kawade, Goto and Yoshino.
Copyright © 2022 Kishimoto, Kinoshita, Kikuchi, Bun, Kitazawa, Horigome, Tazawa, Takamiya, Hirano, Mimura, Liang, Koga, Ochiai, Ito, Miyamae, Tsujimoto, Sakuma, Kida, Miura, Kawade, Goto and Yoshino. 2022 Kishimoto, Kinoshita, Kikuchi, Bun, Kitazawa, Horigome, Tazawa, Takamiya, Hirano, Mimura, Liang, Koga, Ochiai, Ito, Miyamae, Tsujimoto, Sakuma, Kida, Miura, Kawade, Goto and Yoshino
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– notice: Copyright © 2022 Kishimoto, Kinoshita, Kikuchi, Bun, Kitazawa, Horigome, Tazawa, Takamiya, Hirano, Mimura, Liang, Koga, Ochiai, Ito, Miyamae, Tsujimoto, Sakuma, Kida, Miura, Kawade, Goto and Yoshino. 2022 Kishimoto, Kinoshita, Kikuchi, Bun, Kitazawa, Horigome, Tazawa, Takamiya, Hirano, Mimura, Liang, Koga, Ochiai, Ito, Miyamae, Tsujimoto, Sakuma, Kida, Miura, Kawade, Goto and Yoshino
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Keywords wearables
digital health
depression
machine learning
personalized medicine
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This article was submitted to Computational Psychiatry, a section of the journal Frontiers in Psychiatry
Reviewed by: Dachun Chen, Beijing Huilongguan Hospital, Peking University, China; Callum Luke Stewart, NIHR Maudsley Biomedical Research Centre (BRC), United Kingdom
Edited by: Taolin Chen, Sichuan University, China
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References Patel (B12) 2017; 167
Aboraya (B4) 2006; 3
Benjamens (B21) 2020; 3
Segura Anaya (B24) 2018; 24
Riemann (B7) 2003; 76
Tazawa (B16) 2020; 6
Aisu (B20) 2022; 1
Reinertsen (B10) 2018; 39
Rohani (B14) 2018; 6
Tazawa (B13) 2019; 253
Chalmers (B23) 2014; 5
Kishimoto (B26) 2022
Udupa (B17) 2007; 100
Mammen (B8) 2013; 4
Pies (B3) 2007; 4
Burton (B5) 2013; 145
Tran (B25) 2019; 2
Snippe (B19) 2016; 35
Dogan (B11) 2017; 19
Faedda (B18) 2016; 57
Wang (B15) 2018; 2
Luik (B6) 2015; 32
Marzano (B9) 2015; 2
Kapur (B1) 2012; 17
Beijers (B2) 2019; 49
Lee (B22) 2021; 12
References_xml – volume: 2
  start-page: 1
  year: 2018
  ident: B15
  article-title: Tracking depression dynamics in college students using mobile phone and wearable sensing.
  publication-title: Proc ACM Interact Mob Wearable Ubiquitous Technol.
– volume: 100
  start-page: 137
  year: 2007
  ident: B17
  article-title: Alteration of cardiac autonomic functions in patients with major depression: a study using heart rate variability measures.
  publication-title: J Affect Disord.
  doi: 10.1016/j.jad.2006.10.007
– volume: 3
  year: 2020
  ident: B21
  article-title: The state of artificial intelligence-based FDA-approved medical devices and algorithms: an online database.
  publication-title: NPJ Digital Med.
  doi: 10.1038/s41746-020-00324-0
– volume: 19
  year: 2017
  ident: B11
  article-title: Smartphone-based monitoring of objective and subjective data in affective disorders: where are we and where are we going? systematic review.
  publication-title: J Med Internet Res.
  doi: 10.2196/jmir.7006
– volume: 253
  start-page: 257
  year: 2019
  ident: B13
  article-title: Actigraphy for evaluation of mood disorders: a systematic review and meta-analysis.
  publication-title: J Affect Disord.
  doi: 10.1016/j.jad.2019.04.087
– volume: 4
  start-page: 649
  year: 2013
  ident: B8
  article-title: Physical activity and the prevention of depression: a systematic review of prospective studies.
  publication-title: Am J Prev Med.
  doi: 10.1016/j.amepre.2013.08.001
– volume: 49
  start-page: 617
  year: 2019
  ident: B2
  article-title: Biomarker-based subtyping of depression and anxiety disorders using latent class analysis. a NESDA study.
  publication-title: Psychol Med.
  doi: 10.1017/S0033291718001307
– volume: 167
  start-page: 755
  year: 2017
  ident: B12
  article-title: Using wearable devices and smartphones to track physical activity: initial activation, sustained use, and step counts across sociodemographic characteristics in a national sample.
  publication-title: Ann Intern Med.
  doi: 10.7326/M17-1495
– volume: 17
  start-page: 1174
  year: 2012
  ident: B1
  article-title: Why has it taken so long for biological psychiatry to develop clinical tests and what to do about it?
  publication-title: Mol Psychiatry.
  doi: 10.1038/mp.2012.105
– volume: 24
  start-page: 1
  year: 2018
  ident: B24
  article-title: Ethical implications of user perceptions of wearable devices.
  publication-title: Sci Eng Ethics.
  doi: 10.1007/s11948-017-9872-8
– volume: 4
  start-page: 18
  year: 2007
  ident: B3
  article-title: How “objective” are psychiatric diagnoses?:(guess again).
  publication-title: Psychiatry.
– volume: 145
  start-page: 21
  year: 2013
  ident: B5
  article-title: Activity monitoring in patients with depression: a systematic review.
  publication-title: J Affect Disord.
  doi: 10.1016/j.jad.2012.07.001
– volume: 32
  start-page: 684
  year: 2015
  ident: B6
  article-title: 24-hour activity rhythm and sleep disturbances in depression and anxiety: a population-based study of middle-aged and older persons.
  publication-title: Depression Anxiety.
  doi: 10.1002/da.22355
– volume: 6
  year: 2018
  ident: B14
  article-title: Correlations between objective behavioral features collected from mobile and wearable devices and depressive mood symptoms in patients with affective disorders: systematic review.
  publication-title: JMIR Mhealth Uhealth.
  doi: 10.2196/mhealth.9691
– volume: 6
  year: 2020
  ident: B16
  article-title: Evaluating depression with multimodal wristband-type wearable device: screening and assessing patient severity utilizing machine-learning.
  publication-title: Heliyon.
  doi: 10.1016/j.heliyon.2020.e03274
– volume: 5
  year: 2014
  ident: B23
  article-title: Anxiety disorders are associated with reduced heart rate variability: a meta-analysis.
  publication-title: Front Psychiatry.
  doi: 10.3389/fpsyt.2014.00080
– volume: 39
  year: 2018
  ident: B10
  article-title: A review of physiological and behavioral monitoring with digital sensors for neuropsychiatric illnesses.
  publication-title: Physiol Meas.
  doi: 10.1088/1361-6579/aabf64
– volume: 1
  year: 2022
  ident: B20
  article-title: Regulatory-approved deep learning/machine learning-based medical devices in Japan as of 2020: a systematic review.
  publication-title: PLoS Digital Health.
  doi: 10.1371/journal.pdig.0000001
– volume: 76
  start-page: 255
  year: 2003
  ident: B7
  article-title: Primary insomnia: a risk factor to develop depression?
  publication-title: J Affect Disord.
  doi: 10.1016/S0165-0327(02)00072-1
– volume: 2
  year: 2019
  ident: B25
  article-title: Patients’ views of wearable devices and AI in healthcare: findings from the ComPaRe e-cohort.
  publication-title: NPJ Digital Med.
  doi: 10.1038/s41746-019-0132-y
– volume: 3
  start-page: 41
  year: 2006
  ident: B4
  article-title: The reliability of psychiatric diagnosis revisited: the clinician’s guide to improve the reliability of psychiatric diagnosis.
  publication-title: Psychiatry.
– year: 2022
  ident: B26
  article-title: Development of medical device software for the screening and assessment of depression severity using data collected from a wristband-type wearable device: SWIFT study protocol.
  publication-title: medRxiv.
– volume: 35
  year: 2016
  ident: B19
  article-title: Change in daily life behaviors and depression: within-person and between-person associations.
  publication-title: Health Psychol.
  doi: 10.1037/hea0000312
– volume: 12
  year: 2021
  ident: B22
  article-title: Current advances in wearable devices and their sensors in patients with depression.
  publication-title: Front Psychiatry.
  doi: 10.3389/fpsyt.2021.672347
– volume: 2
  start-page: 942
  year: 2015
  ident: B9
  article-title: The application of mHealth to mental health: opportunities and challenges.
  publication-title: Lancet Psychiatry.
  doi: 10.1016/S2215-0366(15)00268-0
– volume: 57
  start-page: 706
  year: 2016
  ident: B18
  article-title: Actigraph measures discriminate pediatric bipolar disorder from attention-deficit/hyperactivity disorder and typically developing controls.
  publication-title: J Child Psychol Psychiatry.
  doi: 10.1111/jcpp.12520
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Snippet Few biomarkers can be used clinically to diagnose and assess the severity of depression. However, a decrease in activity and sleep efficiency can be observed...
IntroductionFew biomarkers can be used clinically to diagnose and assess the severity of depression. However, a decrease in activity and sleep efficiency can...
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StartPage 1025517
SubjectTerms depression
digital health
machine learning
personalized medicine
Psychiatry
wearables
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Title Development of medical device software for the screening and assessment of depression severity using data collected from a wristband-type wearable device: SWIFT study protocol
URI https://www.ncbi.nlm.nih.gov/pubmed/36620664
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https://pubmed.ncbi.nlm.nih.gov/PMC9811592
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Volume 13
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