BiAffect 12+

University of Illinois

    • 무료

iPhone 스크린샷

설명

Thank you for trying BiAffect. In this ResearchKit study, we would like to understand the relationship between mood and neurocognitive functioning in bipolar disorder using keystroke dynamics (such as typing speed and typing errors) and other passive sensor information (such as the accelerometer). You don't have to be a person with bipolar disorder to help us test this app—we also need healthy participants to use the app and serve as a control group.

Currently, diagnosis and treatment of bipolar disorder rely on careful history taking and examination by a clinician, at times aided by self-report or caretaker-informed questionnaires. In general, these reports have to be interpreted by providers in order to extract patterns that could indicate an imminent change in mood. Moreover, they do not necessarily represent objective psycho-physiological markers.

On the other hand, the pervasive use of mobile wireless devices has significantly shaped interpersonal communications in modern life. Indeed, as personal smartphone technology advances, people are increasingly interacting with one another via typed (rather than oral) communications. For this reason, we want to investigate if keyboard dynamics and sensor data from iPhone serve as more objective biomarkers or 'virtual mental-health footprints' of bipolar disorder and mood in general.

새로운 기능

버전 2.2.0

Added support for including additional active tasks

앱이 수집하는 개인정보

University of Illinois 개발자가 개인정보 처리방침 및 데이터 처리 방식에 관한 세부사항을 Apple에 제공하지 않았습니다. 자세한 내용은 개발자의 개인정보 처리방침을 참조하십시오.

세부사항이 제공되지 않음

개발자가 다음번에 앱 업데이트를 제출할 때 개인정보 보호 세부사항을 제공해야 합니다.

이 개발자의 앱 더 보기

Illinois
교육
치매 안내 전문가
교육
BiAffect3
건강 및 피트니스
TeslaTown
교육
Safewalks U of I
교육
Chicago Water Walk
교육

좋아할 만한 다른 항목

MetricWire
의료
Skye 101
의료
mindLAMP 2
의료
SOBP Conference
의료
Moodr
의료
High Enroll, LLC
의료