Tag: AIAssisted

  • The Experience Signals Healthcare Teams Might Be Missing and How AI-Assisted Workflows Surface Them Earlier

    The Experience Signals Healthcare Teams Might Be Missing and How AI-Assisted Workflows Surface Them Earlier

    Many healthcare teams rely on surveys and outcomes data to assess experience. But some of the most predictive signals appear earlier, in everyday interactions that traditional systems overlook.

    Healthcare organizations collect more experience data than ever before. Surveys measure satisfaction. Dashboards track usage. Quality programs score performance.

    Yet many teams still find themselves reacting late to disengagement, escalation, or breakdowns in trust.

    The reason, experts say, is not a lack of data but a narrow definition of what counts as a signal. Some of the most consequential indicators of experience risk emerge before complaints are filed or metrics move. They appear in routine interactions that feel ordinary until patterns form.

    At Transcom, a global provider of healthcare CX advisory and support services, these signals are increasingly treated as early warnings rather than background noise.

    Why Traditional Experience Measures Fall Short

    Surveys and performance metrics capture how people feel after an interaction ends. They are less effective at showing how confident or confused people feel while navigating care.

    Research published in JAMA Network Open in 2024 found that patient-reported experience measures often lag behind behavioral changes that precede missed care or disengagement (JAMA Network Open, 2024).

    By the time dissatisfaction appears in scores, behavior has already shifted.

    According to Travis Coates, CEO of Americas and Asia at Transcom, experience strain often becomes visible first in how people seek help.

    “Repeated inquiries on the same topic usually reflect unclear communication or fragmented processes,” Coates said. “Those are early warning signs that experience quality and ratings performance are at risk.”

    The Experience Signals Teams Often Overlook

    Healthcare teams interact with early signals every day without labeling them as such. These indicators tend to surface across support, messaging, and navigation touchpoints.

    Commonly missed signals include:

    • Members contacting support multiple times for the same clarification
    • Hesitation or uncertainty when confirming next steps
    • Channel switching to seek reassurance rather than new information
    • Longer interactions driven by explanation rather than resolution
    • Tasks that are started but not completed digitally

    Individually, these moments appear routine. In combination, they point to rising effort and declining confidence.

    A 2023 survey reported that 44% of U.S. adults said they had skipped or delayed needed care in the past two years, citing cost, complexity, and confusing logistics as common barriers even when care was technically accessible (TIME, 2023).

    Why These Signals Matter More Now

    Healthcare systems are under pressure to do more with constrained resources. When experience friction goes undetected, it often resurfaces later as higher call volume, missed appointments, or avoidable escalation.

    The Centers for Disease Control and Prevention has linked delays in care and missed follow-ups to downstream cost and poorer outcomes, particularly for chronic and behavioral health conditions (CDC, 2023).

    Experience signals offer a chance to intervene earlier, when clarification and guidance are still effective.

    How AI-assisted Workflows Change Timing

    AI does not replace human judgment or frontline teams. Its value lies in surfacing patterns that are difficult to see at scale.

    When AI is applied to interaction data, messaging content, and workflow paths, it can highlight where experience strain is forming at scale.

    These systems help teams identify:

    • Where instructions consistently trigger follow-up questions
    • Which steps generate repeated confusion across channels
    • When effort increases before outcomes decline
    • How experience risk clusters around specific workflows

    According to Coates, this shifts experience management from reaction to anticipation.

    “Frontline teams are the earliest indicators of where experiences start to strain,” Coates said. “They encounter confusion before it ever appears in dashboards.”

    What Early Visibility Enables

    Seeing experience signals earlier allows healthcare teams to act before trust erodes.

    Organizations can:

    • Clarify instructions before confusion compounds
    • Align digital and live guidance around the same expectations
    • Reduce avoidable follow-ups and escalations
    • Protect continuity of care without adding staff

    A 2024 report from National Academy of Medicine emphasized that reducing cognitive and administrative burden is central to improving experience and system performance simultaneously (NAM, 2024).

    From Measurement to Understanding

    Experience is not only about satisfaction. It is about whether people know what to do next and feel confident doing it.

    AI-assisted workflows help healthcare teams move beyond measuring outcomes to understanding behavior. They surface signals that have always been present, but rarely captured.

    The systems that adapt fastest will be those that treat everyday interactions as data with meaning, not noise.

    FAQs

    What are experience signals in healthcare?

    They are behavioral patterns that indicate confidence, confusion, or rising effort during care navigation.

    Why do traditional surveys miss experience risk?

    Because they capture sentiment after interactions rather than behavior during them.

    How can AI surface experience signals earlier?

    By analyzing patterns across interactions, messages, and workflows at scale.

    Why does early detection matter for care delivery?

    It allows teams to intervene before disengagement or escalation occurs.

    Are experience signals different from satisfaction scores?

    Yes. Signals reflect behavior in real time, while scores reflect reflection afterward.

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  • AI-Assisted Wearable Device ‘Speaks’ For People With Dysfunctional Vocal Cords

    AI-Assisted Wearable Device ‘Speaks’ For People With Dysfunctional Vocal Cords

    Speech-language pathology is an area of medical science based on the mechanics of voice production and the evaluation, treatment and prevention of communication. AI-assisted technology has played a crucial role in developing treatment options for conditions that affect speech, such as stuttering or the inability to control specific muscles after a stroke.

    UCLA bioengineers have created a device that translates larynx muscle movements into speech with incredible accuracy. This small, non-invasive device offers a promising alternative for those with voice disorders, providing an effective way to communicate during recovery.

    Speech Pathology, AI & Wearable Devices

    Everyone from healthcare professionals and medical researchers to students and graduates of institutions like the Ithaca College online SLP program can attest to the wonderful advances the ethical use of non-generative AI models has facilitated.

    AI’s unique ability to rapidly and efficiently analyze, compile, and produce results according to trends within the data analysis may come in handy with a unique magnetic phenomenon, magnetoelasticity. Magnetoelasticity describes the change of a material’s magnetic properties under strain. Using this concept and AI-assisted technology, a research team at UCLA led by Assistant Professor of Bioengineering Jun Chen has developed a promising breakthrough.

    The wearable device consists of biocompatible silicone and copper induction coils that generate electrical signals from muscle movements. When people talk, the movement of the vocal folds and throat muscles distorts the magnetic fields of the device, resulting in magnetoelasticity. When this happens, sensors in the device detect larynx muscle movements and produce electrical signals that an artificial intelligence model can read, interpret, and then produce output from. This output results in effective speech, allowing those with dysfunctional vocal cords to regain their voice function.

    Tested on eight adults so far, it demonstrated nearly 95% accuracy in translating sentences.

    The research team plans to expand the device’s vocabulary using machine learning and test it on individuals with speech disorders. This non-invasive technology offers a promising alternative to current solutions and will be further tested and expanded to help those with speech disorders.

    AI Applications Speech Therapy

    In recent years, speech pathology technology has been developing rapidly. Automated speech recognition software and applications have been a highlight and have been around for years. However, a huge advantage of AI models in speech pathology (as well as in general medicine) is the sheer volume of data they can draw from.

    To work, AI has to be “trained” on input fed to it by the user. The AI can then store and remember all of this information and produce relevant data or output based on the data used to train it. Of course, humans are also capable of this, but it requires hours, perhaps even days, of sorting through test results, noting down the relevant data, and then comparing and checking it against itself.

    AI can be fed the data and produce the relevant stats, figures, or results in minutes. Also, since AI can be connected to audio equipment, it can recognize impairments and anomalies at much earlier stages than a human might be able to. There are even examples of some companies utilizing speech pathology AI with clients.

    Finally, as it has been for the last few decades, AI can miraculously help develop and plan treatment for speech therapy clients. With its tremendous power of collecting, storing, remembering, recalling, sorting, and summarizing statistics and data, AI can look through patient records with unparalleled speed and efficiency and determine accurate and applicable treatment plans, considering the entirety of a patient’s history.

    The Future of AI in Medicine

    Although AI has garnered much recent attention, it is important to understand the context of this criticism. The use of generative AI models (AI that utilizes original works to produce something else) is a controversial topic in many sectors, but it is important to remember that the AI we see being used here and in the medical industry is not generative, it is simply a tool used to streamline an otherwise extensive process.

    This is not an AI that takes information and then attempts to produce an original work; it is an AI that takes data and then rapidly analyzes and delivers the results of that data. It’s a smarter version of making a chart or table in Excel. More importantly, this AI is helping people. AI in medicine has led to more accurate and faster treatments and improved efficiency in hospitals and medical facilities.

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