ClinicalTrials.Veeva

Menu

Trauma Follow-Up Prediction (Project 2: Aim 2)

U

University of Buea

Status

Not yet enrolling

Conditions

Injuries
Injury Traumatic

Treatments

Device: Optimized version of the mHealth screening tool (intervention) using the machine learning approach

Study type

Interventional

Funder types

Other
NIH

Identifiers

NCT05464017
U54TW012087 (U.S. NIH Grant/Contract)
GRANT13254336 - Aim 2

Details and patient eligibility

About

Approximately 9% of the world's deaths, more than 5 million deaths annually, are due to injury. In high-income countries, where the epidemiology and outcomes of traumatic injury are well characterized, trauma primarily affects young, productive members of the population and is associated with significant long-term disability. In sub-Saharan Africa (SSA) countries like Cameroon, injured people face multiple obstacles to trauma care, including potentially lifesaving follow-up care after hospital discharge. The Investigators' community-based survey of 8,065 patients in South west Cameroon found that 34.6% of injured respondents did not seek immediate formal care after injury, and another 9.9% only sought formal care after alternative means, such as consultation with traditional medicine practitioners.

In Cameroon, for the 65.4% of injured people who seek formal care after injury,5 therapeutic itineraries can be complex, often involving poorly supported referrals to other facilities or transitions away from formal care. As a result, formal systems of care fail to retain trauma patients for follow-up care, a missed opportunity as these patients have already overcome significant financial and personal challenges to seek initial care for their injuries. Consequently, discharged trauma patients who may benefit from follow-up care often delay care until advanced complications develop.

The objective of this study is to evaluate a machine learning optimized phone-based screening tool that predicts which trauma patients are most likely to benefit from follow-up care. A Cluster randomized trial controlled trail will be carried out in 10 hospitals in Cameroon involving 852 trauma patients. The control group shall use the existing standard mHealth screening tool while the intervention shall use the optimized version of the mHealth screening tool (intervention) using the machine learning approach. Patients shall be followed up over a 6 months period to determine the proportion of trauma post discharge patients that need follow up care using mobile phone.

Full description

The technological convergence of mHealth and machine learning provides an unprecedented opportunity to transform injury care in SSA, particularly for disadvantaged populations. The ubiquity of mobile phones and the advent of mHealth provides a novel opportunity to improve injury care in SSA. Given high levels of mobile phone penetration in Cameroon (85% to 95%) and elsewhere in SSA, the investigators designed and piloted an mHealth, phone-based 7-item screening tool for trauma patients to predict the need for in-person follow-up care after discharge. If effective, this approach could efficiently identify the subset of patients most likely to benefit from follow-up care, which is more feasible, scalable, and cost-effective than blanket advice for post-discharge care. The investigators found that phone follow-up is feasible and acceptable and a validation study revealed good correlation of the screening tool with an independent, in-person exam.

Investigators will build upon their prior research and use data science to improve, implement and evaluate the mHealth screening tool, with the ultimate objective of reducing the crippling burden of injury. This will be achieved by leveraging on machine learning, which has demonstrated promise in optimizing trauma care and trauma systems.The novel combination of mHealth and machine learning provides a powerful opportunity to transform access to health care for those least likely to receive it. Building on existing knowledge, the investigators hypothesize that a data-adaptive, machine-learning approach to outcomes prediction could radically improve survival and reduce morbidity after injury in SSA.

Investigators will apply a machine learning approach to adaptively optimize the mHealth triage tool, improving the phone call timing and algorithm that predicts the need for follow-up care via a cluster randomized controlled trial. This will be achieved using SuperLearner for prediction and cross-validated targeted maximum likelihood estimation (CV-TMLE) for variable importance, using the trauma registry, contact attempt, and screening survey data collected in Aim 1. The overall goal is to improve the mHealth tool's prediction of vulnerable patients needing follow-up care after discharge. This study shall be conducted over an 18-months period; enrollment in 6 months and follow-up participants for 12 months. Investigators will evaluate the impact of the optimized approach in a randomized study in 10 hospitals with 852 injury patients with the primary outcome of the Glasgow Outcomes Scale-Extended (GOSE)24,25 score at 3 months.

Enrollment

852 estimated patients

Sex

All

Volunteers

Accepts Healthy Volunteers

Inclusion criteria

  • Trauma Registry (CTR): Patients satisfying the following inclusion criteria will be included in the registry:

    1. Patients with acute traumatic injury i.e. within 2 weeks of presentation for care.
    2. Trauma patients who are formally admitted to the hospital as in-patients.
    3. Trauma patients who die upon arriving to the Emergency Departments or while admitted in the hospital.
    4. Trauma patients who are transferred to other health facilities.
    5. Trauma patients with indications for hospital admission (based on physicians' assessments) but leave against medical advice
    6. Trauma patients who are kept under observation in the Emergency Department for over 24 hours

Standard mHealth Triage Tool Eligibility: The mHealth triage tool will be administered to the subset of patients included in the trauma registry who are admitted then discharged home after treatment.

Optimized version of the mHealth screening tool (intervention) Eligibility: The optimized version of mHealth screening tool will be administered to the subset of patients included in the trauma registry who are admitted then discharged home after treatment.

Exclusion criteria

  • Trauma Registry Exclusion criteria: Patients will not be excluded based on age, gender, race, or nationality. If patients or their surrogate decision-maker do not give consent to participation, those patients will be excluded.

According to the World Health Organization (WHO) injury definition, the following will be excluded from the definition of "injury": "Whereas the above definition of an injury includes drowning (lack of oxygen), hypothermia (lack of heat), strangulation (lack of oxygen), decompression sickness or "the bends" (excess nitrogen compounds) and poisonings (by toxic substances), it does NOT include conditions that result from continual stress, such as carpal tunnel syndrome, chronic back pain and poisoning due to infections. Mental disorders and chronic disability, although these may be eventual consequences of physical injury, are also excluded by the above definition." Although included in the WHO definition, poisonings will be excluded from the CTR as these have been extremely rare events in the CTR to date and are not typically included in trauma registries in most other contexts.

Patients who are not formally admitted and discharged within 24 hours from the Emergency Ward will be excluded.

Trial design

Primary purpose

Prevention

Allocation

Randomized

Interventional model

Parallel Assignment

Masking

Single Blind

852 participants in 2 patient groups

Standard mHealth screening tool
No Intervention group
Description:
This is a tested standard phone screening tool which determines the need for in-person follow-up after a patient has been discharge. Consenting trauma patients will be contacted via mobile phone at 0.5, 1, 3, and 6 months post-discharge by a research assistant to complete the screening which will guide whether or not the patient should seek follow-up care based on the number of flagged responses to ≥1 question on the 7-item screening survey.
Optimized version of the mHealth screening tool (intervention) using the machine learning approach
Experimental group
Description:
This arm will receive an improvement to the mHealth triage tool using a machine learning approach. Patients will be called using the optimized tool at outcome timepoints (3 months, 6months and 12months). At each call, research assistants will complete the GOSE survey and the mHealth triage tool, entering call outcomes and patient responses directly into the mHealth system. If follow-up care is indicated, the research assistant will share that information with the patient and offer to schedule an appointment.
Treatment:
Device: Optimized version of the mHealth screening tool (intervention) using the machine learning approach

Trial contacts and locations

0

Loading...

Central trial contact

Alain Chichom-Mefire, MD; Fanny JN Dissak-Delon, MD, PhD

Data sourced from clinicaltrials.gov

Clinical trials

Find clinical trialsTrials by location
© Copyright 2024 Veeva Systems