health-tech

2 posts

google

Unlocking health insights: Estimating advanced walking metrics with smartwatches (opens in new tab)

Google researchers have validated that smartwatches are a highly reliable and accurate platform for estimating complex spatio-temporal gait metrics, rivaling the performance of smartphone-based methods. By utilizing a multi-head deep learning model, the study demonstrates that wrist-worn devices can provide continuous, lab-grade health insights into a user's walking speed, step length, and balance without requiring the specific pocket placement or specialized laboratory equipment previously necessary for such data. ## Multi-Head Deep Learning for Wrist-Based Sensors * The researchers developed a temporal convolutional network (TCN) architecture designed to process raw inertial measurement unit (IMU) data, specifically 3-axis accelerometer and gyroscope signals sampled at 50 Hz. * Unlike traditional models that only track temporal events and are prone to integration drift, this multi-head approach directly estimates both unilateral and bilateral metrics simultaneously. * The model architecture extracts embeddings from the IMU signals and concatenates them with user height (a demographic scalar input) to improve the precision of spatial predictions. * The system estimates a comprehensive suite of metrics, including gait speed, double support time (the proportion of time both feet are on the ground), step length, swing time, and stance time. ## Large-Scale Validation and Study Protocol * To ensure rigorous results, the study involved a diverse cohort of 246 participants across two international sites, generating approximately 70,000 walking segments. * Ground truth measurements were captured using a professional-grade Zeno Gait Walkway system to provide high-precision reference data for comparison. * The study protocol included various walking conditions to test the model's versatility: a self-paced six-minute walk test (6MWT), fast-paced walking, and induced physical asymmetry created by wearing hinged knee braces at specific angles. * Researchers employed a five-fold cross-validation strategy, ensuring that all data from a single participant remained within a single split to prevent data leakage and ensure the model generalizes to new users. ## Clinical Validity and Comparative Performance * Smartwatch estimates demonstrated strong validity and excellent reliability, with Pearson correlation coefficients (r) and intraclass correlation coefficients (ICC) exceeding 0.80 for most metrics. * Performance comparisons showed non-significant differences in Mean Absolute Percentage Error (MAPE) between the Pixel Watch and Pixel phone, establishing the smartwatch as a viable alternative to smartphone-based tracking. * While double support time showed slightly lower but acceptable reliability (ICC 0.56–0.60), other metrics like step length and gait speed proved highly consistent across different walking speeds and styles. * The model’s success suggests that smartwatches can effectively bridge the gap in gait analysis, providing a more practical and consistent platform for continuous health tracking than handheld devices. This research establishes smartwatches as a powerful tool for longitudinal health monitoring, enabling the detection of neurological or musculoskeletal changes through passive, continuous gait analysis in everyday environments.

google

Towards better health conversations: Research insights on a “wayfinding” AI agent based on Gemini (opens in new tab)

Google Research has developed "Wayfinding AI," a research prototype based on Gemini designed to transform health information seeking from a passive query-response model into a proactive, context-seeking dialogue. By prioritizing clarifying questions and iterative guidance, the agent addresses the common struggle users face when attempting to articulate complex or ambiguous medical concerns. User studies indicate that this proactive approach results in health information that participants find significantly more helpful, relevant, and tailored to their specific needs than traditional AI responses. ### Challenges in Digital Health Navigation * Formative research involving 33 participants highlighted that users often struggle to articulate health concerns because they lack the clinical background to know which details are medically relevant. * The study found that users typically "throw words" at a search engine and sift through generic, impersonal results that do not account for their unique context. * Initial UX testing revealed a strong user preference for a "deferred-answer" approach, where the AI mimics a medical professional by asking clarifying questions before jumping to a conclusion. ### Core Design Principles of Wayfinding AI * **Proactive Conversational Guidance:** At every turn, the agent asks up to three targeted questions to reduce ambiguity and help users systematically share their "health story." * **Best-Effort Answers:** To ensure immediate utility, the AI provides the best possible information based on the data available at that moment, while noting that the answer will improve as the user provides more context. * **Transparent Reasoning:** The system explicitly explains how the user’s most recent answers have helped refine the previous response, making the AI’s internal logic understandable. ### Split-Stream User Interface * To prevent clarifying questions from being buried in long paragraphs, the prototype uses a two-column layout. * The left column is dedicated to the interactive chat and specific follow-up questions to keep the user focused on the dialogue. * The right column displays the "best information so far" and detailed explanations, allowing users to dive into the technical content only when they feel enough context has been established. ### Comparative Evaluation and Performance * A randomized study with 130 participants compared the Wayfinding AI against a baseline Gemini 2.5 Flash model. * Participants interacted with both models for at least three minutes regarding a personal health question and rated them across six dimensions: helpfulness, question relevance, tailoring, goal understanding, ease of use, and efficiency. * The proactive agent outperformed the baseline significantly, with participants reporting that the context-seeking behavior felt more professional and increased their confidence in the AI's suggestions. The research suggests that for sensitive and complex topics like health, AI should move beyond being a passive knowledge base. By adopting a "wayfinding" strategy that guides users through their own information needs, AI agents can provide more personalized and empowering experiences that better mirror expert human consultation.