Using Machine Learning to Detect Risky Behavior in Psychiatric Clinics
NCT ID: NCT06421480
Last Updated: 2024-06-11
Study Results
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Basic Information
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NOT_YET_RECRUITING
1 participants
OBSERVATIONAL
2024-06-20
2024-09-20
Brief Summary
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Detailed Description
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Preventing risky behavior and providing a safe environment in psychiatric clinics is an important issue in our country and in the world. In order to detect risky behaviors and ensure patient/employee safety, there are measures to monitor patients with cameras in psychiatric clinics within the scope of quality standards in health. However, these measures are not sufficient to completely solve the problem. In psychiatric clinics, patient monitoring is provided by a nurse who constantly monitors the camera images placed in the rooms on the computer screen. The low number of nurses, especially on night shifts, makes camera monitoring difficult during night shifts and poses a problem in terms of patient safety. Constant monitoring of monitors by the nurse reduces the time spent with the patient and increases the workload. Additionally, when screen monitoring is not done, risky behaviors cannot be detected. Therefore, new methods need to be developed to ensure a safe environment in psychiatric clinics. In this sense, the machine learning method, which is increasingly used in artificial intelligence and data analysis, is a specialized sub-branch of artificial intelligence algorithms that tries to derive meaningful results/predictions from existing data. Machine learning method is frequently used in the field of health, and psychiatry is one of these fields. The main purpose of this study is to detect risky and high-risk behaviors of patients treated in a psychiatric clinic using machine learning method and to ensure that patients receive treatment in a safer environment.
The behaviors that are desired to be detected are risky and high-risk behaviors. The high-risk behavior that is targeted to be detected is an act of suicide through hanging. Risky behavior; Behaviors that include acts of violence such as slapping, pushing, dropping to the ground, pulling hair, pushing against the wall, choking from behind, kicking, putting a pillow on one's face, and struggling. Our primary aim in our study is to detect risky and high-risk behaviors of patients treated in a psychiatric clinic by using machine learning method and to ensure that patients receive treatment in a safer environment. The aim is to send an alert to healthcare workers' phones and to the computer screen in the clinic where the system will be installed. A red alarm with the room number for hanging, which is a high-risk action, and an orange alarm for violent behavior will be sent to both the healthcare worker's phone and the clinic computer screen. Body movements and limb movements will be used in the training of artificial intelligence.Two-dimensional images of behaviors will be created with the Openpose application. Then, a Long Short Term Memory (LSTM) based deep learning model will be created. In the final stage, the success of the model will be evaluated with the F1 score.
Conditions
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Study Design
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OTHER
CROSS_SECTIONAL
Interventions
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Detecting Risky Behaviors and Providing a Safe Environment in Patients Receiving Inpatient Treatment in a Psychiatric Clinic Using Machine Learning Model
Using machine learning, the computer will be trained to detect suicide and violent behavior. Cameras will be placed in patient rooms. These cameras will transfer the image to the computer. The computer will process these images and detect suicidal and violent behavior early. A warning will appear on the computer screen
Eligibility Criteria
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Inclusion Criteria
Exclusion Criteria
ALL
No
Sponsors
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Istanbul Medeniyet University
OTHER
Responsible Party
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CEYDA ÖZTÜRK AKDENİZ
Principal Investigator
Locations
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Detecting Risky Behaviors and Providing a Safe Environment in Patients Receiving Inpatient Treatment in a Psychiatric Clinic Using Machine Learning Model
Istanbul, , Turkey (Türkiye)
Countries
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Central Contacts
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Other Identifiers
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İstanbulMedeniyet
Identifier Type: -
Identifier Source: org_study_id
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