Digital health literacy means being able to look for, find, understand, and judge health information from electronic sources and use that knowledge to solve health problems. In mental health care, digital literacy affects how patients and providers use tools like apps, telehealth systems, and online therapy platforms.
The Journal of Medical Internet Research (JMIR), a journal about digital medicine, shows that digital health literacy is key to how patients manage their own health and how well they use digital mental health tools. Tools such as the eHealth Literacy Scale (eHEALS) help measure the skills of patients, especially those with complicated health issues. This measurement helps providers adjust treatments to fit what patients can understand and use better.
When digital literacy is low, it can stop patients from fully joining therapy. This leads to many people quitting early and not following treatment plans well. For example, therapist-assisted internet-based cognitive behavioral therapies (iCBTs) usually have fewer dropouts than self-guided programs because therapists offer support and clear up confusions, which helps patients who struggle with digital tools.
In the United States, social factors like income, education, race, and internet access play a big role in digital health literacy. For example, rural areas often have poor internet, making telehealth and online mental health programs hard to reach. Older people or some ethnic groups may know less about technology, making it tough for them to use digital mental health care.
JMIR notes that differences in digital literacy cause different levels of participation in mobile ecological momentary assessments (EMA), which collect real-time data on patients’ moods and behavior. Healthcare leaders need to think about these factors when using digital tools, so they don’t make health inequalities worse.
Research shows that having therapists involved in digital mental health care helps patients stick with their treatments and get better results. Therapist-assisted iCBTs have better patient engagement than programs without therapist support. Therapists provide explanations, encouragement, and adjust treatment to fit each patient’s needs.
For healthcare managers, this means that digital health programs should help therapists, not replace them. Training and scheduling should allow therapists to mix digital and in-person care to keep patients engaged. Therapists can also help patients who struggle with digital skills by teaching them how to use apps and platforms.
Allied health professionals like nurses, therapists, and behavioral health specialists are important in giving digital mental health care. But if they don’t use technology well, it can hurt how effective the programs are.
As digital tools grow fast in the U.S. healthcare system, there is a need for training that focuses on how to use the tools well and fit them into daily work. JMIR reports that nurses face challenges like too many alerts, poor fit with their usual work, and low support from organizations. These problems make it harder to use the technology fully.
Healthcare IT managers and administrators should focus on:
Improving digital health literacy among allied health workers leads to smoother use of tools, more confidence, and better patient care.
Artificial intelligence (AI) can help clinicians and health professionals by looking at large amounts of patient data to support diagnosis, plan treatments, and monitor mental health. AI tools can reduce burnout for clinicians and may help patients get better treatment.
At the same time, ethical issues must be addressed. The “right to explanation” means both patients and providers should know how AI made its recommendation or diagnosis. Healthcare organizations need to make sure this transparency is kept when adding AI into mental health care.
Some companies build AI systems that handle front-office phone work. In the U.S., where phone lines get very busy, AI answering services can help by handling appointment schedules, answering patient questions, and sending reminders.
For mental health clinics, this automation makes it easier for patients to connect and get help. It also lowers problems caused by low digital literacy. AI in front offices reduces missed calls, helps staff work more smoothly, and lets clinicians spend more time with patients.
Automation works best when it fits into current hospital or clinic procedures. AI systems for scheduling, electronic health records (EHR), and messaging reduce manual work and mistakes. They also help keep patient records accurate and support coordinated care.
Hospital managers and IT staff should make sure new AI tools meet the needs of mental health clinics. Training users, involving staff in design, and checking how well the tools work are important for success.
The open access model of journals like the Journal of Medical Internet Research helps share research and knowledge about digital health. This open sharing helps U.S. healthcare managers learn about new tools without paying fees, so they can make better decisions.
JMIR’s method includes patients in reviewing studies. This helps make sure digital health tools meet the real needs of patients and providers.
Medical administrators can use these published studies and reviews to judge new digital mental health programs and make solutions that fit the digital literacy skills of their patients.
For those running medical and mental health clinics, handling digital health literacy is key to using online mental health tools well. Some suggested steps are:
Using knowledge from JMIR and applying AI tools carefully can help healthcare groups meet digital literacy challenges and improve mental health care.
Digital health literacy greatly affects how well online mental health care works in the United States. When literacy problems are solved with assessments, training, and helpful technology like AI automation, both patients and healthcare systems benefit. Medical practice leaders and IT managers have a key job in making plans that include digital literacy, help equal access, and improve both patient care and clinic efficiency.
JMIR is a leading, peer-reviewed open access journal focusing on digital medicine and health care technologies. It ranks highly in Medical Informatics and Health Care Sciences, making it a significant source for research on emerging digital health innovations, including public mental health interventions.
JMIR provides open access to research that includes applied science on digital health tools, which allied health professionals can use for patient education, prevention, and clinical care, thus enhancing access to current evidence-based mental health interventions.
The journal covers Internet-based cognitive behavioral therapies (iCBTs), including therapist-assisted and self-guided formats, highlighting their cost-effectiveness and use in treating various mental health disorders with attention to engagement and adherence.
Therapist-assisted iCBTs have lower dropout rates compared to self-guided ones, indicating that therapist involvement supports engagement and adherence, which is crucial for effective public mental health intervention delivery.
Long-term engagement remains challenging, with research suggesting microinterventions as a way to provide flexible, short, and meaningful behavior changes. However, integrating multiple microinterventions into coherent narratives over time needs further exploration.
Digital health literacy is essential for patients and providers to effectively utilize online resources. Tools like the eHealth Literacy Scale (eHEALS) help assess these skills to tailor interventions and ensure access and understanding.
Biofeedback systems show promise in improving psychological well-being and mental health among workers, although current evidence often comes from controlled settings, limiting generalizability for workplace public mental health initiatives.
AI integration offers potential improvements in decision-making and patient care but raises concerns about transparency, accountability, and the right to explanation, affecting ethical delivery of digital mental health services.
Barriers include maintaining patient engagement, ensuring adequate therapist involvement, digital literacy limitations, and navigating complex legal and ethical frameworks around new technologies like AI.
JMIR encourages open science, patient participation as peer reviewers, and publication of protocols before data collection, supporting collaborative and transparent research that can inform more accessible mental health interventions for allied health professionals.