Palliative Care Clinical Trial
Official title:
The Impact of Artificial Intelligence/Machine Learning (AI/ML) on Time to Palliative Care Review in an Inpatient Hospital Population
Investigators are testing whether machine learning prediction models integrated into a health care model will accurately identify participants who may benefit from a comprehensive review by a palliative care specialist, and decrease time to receiving a palliative care consult in an inpatient setting.
The need for timely palliative care is crucial. Aging patient populations are becoming more complex, often needing care from multiple specialties. There has been a growing mismatch between clinical care and patient preferences particularly with regards to services near end-of-life. Research has shown that that most people prefer to die at home despite the majority dying outside of the home (nursing home or hospital). Given the current model of care and incentives palliative care is considered the care of last resort after all attempts at cure have been exhausted. This delay can lead to sub-optimal symptom management for pain and lower quality of life. As the demand for palliative care increases, policy initiatives and referral triage tools to that lead to quality palliative care services are needed. In 2018 the Mayo Clinic developed a fully integrated information technology (IT) solution focusing on the identification of patients who may benefit from early palliative care review. The tool, known as Control Tower, pulls disparate data sources centered on a machine learning algorithm which predicts the need for palliative care in hospital. This algorithm was put into production as of December 2018 into a silent mode. The algorithm along with other key patient indicators are integrated into a graphical user interface (GUI) which allows a human operator to review the algorithm predictions and subsequently record the operator's assessment. The tool is expected to enhance risk assessment and create a healthcare model in which palliative care can pro-actively and effectively screen for patient need. Anticipated benefits of the approach include improved symptom control and patient satisfaction as well as a measurable impact on inpatient hospital mortality. The overall objective of this study is to assess the effectiveness and implementation of the Control Tower palliative care algorithm into hospital practice by creating a stepped wedge cluster randomized trial in 16 inpatient units. By creating an algorithm that automatically screens and monitors patient health status during inpatient hospitalization, the investigators hypothesize that participants will receive needed palliative care earlier than under the usual course of care. In addition to testing clinical effectiveness study members will also collect data for process measures to assess the algorithm and healthcare performance after translation of the prediction algorithm from a research domain to a practice setting. ;
Status | Clinical Trial | Phase | |
---|---|---|---|
Completed |
NCT04673760 -
The PROAKTIV Study
|
N/A | |
Completed |
NCT03520023 -
Critical Care and Palliative Care Medicine Together in the ICU
|
N/A | |
Completed |
NCT01990742 -
Improving Palliative Care Through Teamwork
|
N/A | |
Not yet recruiting |
NCT05434208 -
Effects of Nurse-led Telephone Based Service for Early Palliative Care (PALTEL)
|
N/A | |
Not yet recruiting |
NCT03267706 -
Introducing the Palliative Care Comprehensive Tool in Family Medicine
|
N/A | |
Completed |
NCT02845817 -
Requests for Euthanasia and Assisted Suicide
|
N/A | |
Recruiting |
NCT02778347 -
Development and Validation of a Comprehensive Standardised Clinical Assessment Tool for Patient Needs
|
N/A | |
Completed |
NCT01933789 -
Improving Communication About Serious Illness
|
N/A | |
Completed |
NCT01934413 -
Technology-enhanced Transitional Care for Rural Palliative Care Patients: A Pilot Study
|
N/A | |
Recruiting |
NCT01170000 -
Timely End-of-Life Communication to Parents of Children With Brain Tumors
|
N/A | |
Recruiting |
NCT04052074 -
Complementary Therapy in Home Palliative Care Patients and Their Caregivers
|
N/A | |
Recruiting |
NCT05935540 -
ACP-Family Programme for Palliative Care Patients and Their Family Member
|
N/A | |
Active, not recruiting |
NCT02689375 -
A Prospective, Open Label, Pilot Study of Patient OutcoMes Following Successful TriAl of High Frequency SpInal CorD Stimulation at 10kHz (HF10™) Leading to Permanent Implant Compared to Trial Failure and Standard CarE for the TreatmeNt of Persistent Low BACK Pain of Neuropathic Origin
|
N/A | |
Recruiting |
NCT05520281 -
Short-term Psychodynamic Psychotherapy in Serious Physical Illness
|
N/A | |
Completed |
NCT06140004 -
Home-Based Palliative Care Impact on Providers
|
||
Completed |
NCT04333719 -
Prevalence of Deep Sedation in Terminal Palliative Phase
|
||
Recruiting |
NCT03286127 -
Palliative Outcome Evaluation Muenster I
|
||
Completed |
NCT06211816 -
Efficacy of End-of-life Communication Strategies on Nurses in the Intensive Care Unit
|
N/A | |
Completed |
NCT04857060 -
Palliative Care Educator
|
N/A | |
Completed |
NCT04491110 -
Intervention to Improve Quality of Sleep of Palliative Patient Carers in the Community: Clinical Trial
|
N/A |