Tuberculosis Clinical Trial
Official title:
Behavior Change and Digital Health Interventions for Improved TB Treatment Outcomes: a RCT
Verified date | January 2022 |
Source | Massachusetts Institute of Technology |
Contact | n/a |
Is FDA regulated | No |
Health authority | |
Study type | Interventional |
Each year, 10.4 million patients are diagnosed with and 1.7 million people die from Tuberculosis (TB). Despite the availability of highly effective and accessible medications in the developing world where TB is endemic, the 6-18 month treatment regimen is often thwarted as patients fail to comply due to a lack of knowledge about the disease, desire for privacy, and/or stigma avoidance. Successful TB treatment is critical for reducing transmission, the selection of drug-resistant strains and treatment costs. Mobile health interventions promise to increase treatment success, especially in regions where directly observed treatment (DOT) is impractical. The most promising interventions attempted thus far employ a combination of SMS reminders and medication monitors. However, there is relatively little high-quality evidence on their impact, and what evidence there is shows mixed success. In Kenya, the burden of TB is among the highest in the world with a prevalence rate of 558 cases per 100,000 people. There is a great need for the development of alternative protocols, which reduce the costs of treatment and burden of adherence, and more effectively motivate patients to adhere to the program. A substantial and growing literature in the social sciences demonstrates the potential of behavioral interventions for generating large increases in contributions to public goods. Keheala, a feature-phone and Internet-based digital platform that uses Unstructured Supplementary Service Data (USSD) technology to register a patient's self-verification of medication adherence alongside support and motivation, based on proven techniques from the behavioral sciences, was shown in a 1,200-patient randomized controlled trial (RCT) to reduce the unsuccessful TB treatment outcomes in Kenya by two-thirds compared to the standard of care protocol. This 15,500 patient RCT will compare Keheala's scalability, cost-effectiveness and social impact to alternative interventions across diverse regions of Kenya.
Status | Completed |
Enrollment | 16146 |
Est. completion date | July 30, 2021 |
Est. primary completion date | May 31, 2020 |
Accepts healthy volunteers | No |
Gender | All |
Age group | N/A and older |
Eligibility | To be eligible for the study, subjects must: - be either clinically diagnosed or bacteriologically confirmed to have TB, MDR TB or EP TB. - communicate in either Swahili or English. - have access to a mobile phone (shared or owned). - have at least two months of treatment remaining. Exclusion Criteria: - subjects who do not consent to participate. Note that subjects are randomized into intervention groups or the control group after providing consent. Subjects who are enrolled but are found, retrospectively to not meet the criteria (i.e. they had less than two months remaining when they were enrolled) will be monitored as part of a, fifth "non-eligible" group, and will not count towards the enrollment targets. |
Country | Name | City | State |
---|---|---|---|
Kenya | Kenya National TB Program | Nairobi |
Lead Sponsor | Collaborator |
---|---|
Massachusetts Institute of Technology | Keheala, Kenya National Tuberculosis, Leprosy and Lung Disease Program, McGill University, United States Agency for International Development (USAID) |
Kenya,
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* Note: There are 36 references in all — Click here to view all references
Type | Measure | Description | Time frame | Safety issue |
---|---|---|---|---|
Other | Unsuccessful treatment outcomes amongst multi-drug resistant patients. | A sub-group analysis of outcomes 1, which combines died, failed and loss to follow up outcomes. | From date of randomization until the date of a documented treatment outcome, assessed up to 24 months after study enrollment date. | |
Other | Deaths amongst multi-drug resistant patients. | A sub-group analysis of outcome 2. | From date of randomization until the date of a documented treatment outcome, assessed up to 24 months after study enrollment date. | |
Other | Survey responses: 1. Have you missed any additional time from work, school, household duties, or other activities because of your TB illness? | Measure and compare the health behaviors, health knowledge, attitudes, prosociality, employment and financial impact of the four interventions. Answer values: yes/no | Patients are surveyed one week after their randomization date and once more three months after a health outcome has been entered. Assessed up to 27 months after study enrollment date. | |
Other | Survey responses: 1a (only if 1=yes). Please estimate how many hours you missed per week? | Measure and compare the health behaviors, health knowledge, attitudes, prosociality, employment and financial impact of the four interventions. Answer values: Whole number greater than zero. | Patients are surveyed one week after their randomization date and once more three months after a health outcome has been entered. Assessed up to 27 months after study enrollment date. | |
Other | Survey responses: 2. If a family member were feeling sick, how likely would you be to suggest that they go to their local health clinic? | Measure and compare the health behaviors, health knowledge, attitudes, prosociality, employment and financial impact of the four interventions. Answer values: Whole number between 1 and 7 (1= unlikely, 7=very likely) | Patients are surveyed one week after their randomization date and once more three months after a health outcome has been entered. Assessed up to 27 months after study enrollment date. | |
Other | Survey responses: 3. How much does taking your TB medication every day help others stay healthy? | Measure and compare the health behaviors, health knowledge, attitudes, prosociality, employment and financial impact of the four interventions. Answer values: Whole number between 1 and 7 (1 = Not at all; 7 = A great deal ) | Patients are surveyed one week after their randomization date and once more three months after a health outcome has been entered. Assessed up to 27 months after study enrollment date. | |
Other | Survey responses: 4. How has having TB influenced how your family and friends treat you? | Measure and compare the health behaviors, health knowledge, attitudes, prosociality, employment and financial impact of the four interventions. Answer values: Whole number between 1 and 7 (1 = very negatively, 7 = very positively) | Patients are surveyed one week after their randomization date and once more three months after a health outcome has been entered. Assessed up to 27 months after study enrollment date. | |
Other | Survey responses: 5. (only if HIV+). How did having TB affect your HIV care? | Measure and compare the health behaviors, health knowledge, attitudes, prosociality, employment and financial impact of the four interventions. Answer values: Whole number between 1 and 7 (1=very negatively, 4=no change, 7=very positively) | Patients are surveyed one week after their randomization date and once more three months after a health outcome has been entered. Assessed up to 27 months after study enrollment date. | |
Other | Survey responses: 6. Is there anything else you wish to share about your experience with TB? | Measure and compare the health behaviors, health knowledge, attitudes, prosociality, employment and financial impact of the four interventions. Answer values: Any typed response. | Patients are surveyed one week after their randomization date and once more three months after a health outcome has been entered. Assessed up to 27 months after study enrollment date. | |
Primary | Unsuccessful Health Outcomes | Composite metric of died, failed and loss to follow up outcomes. | From date of randomization until the date of a documented treatment outcome, assessed up to 24 months after study enrollment date. | |
Primary | Deaths | A TB patient who dies for any reason during the course of treatment. | From date of randomization until the date of a documented treatment outcome, assessed up to 24 months after study enrollment date. | |
Secondary | Adherence | Random IsoScreen urine testing will be performed to validate self-verification, as well as to compare adherence between groups. | Assessed daily from date of randomization until the date of a documented treatment outcome, up to 24 months after study enrollment date. |
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