Publication: Reinforcement Learning on Dyads to Enhance Medication Adherence

Authors: Ziping Xu, Hinal Jajal, Sung Won Choi, Inbal Nahum-Shani, Guy Shani, Alexandra M. Psihogios, Pei-Yao Hung, Susan A. Murphy Abstract Medication adherence is critical for the recovery of adolescents and young adults (AYAs) who have undergone hematopoietic cell transplantation. However, maintaining adherence is challenging for AYAs after hospital discharge, who experience both individual (e.g. physical and emotional symptoms) and interpersonal barriers (e.g., relational difficulties with their care partner, who is often involved in medication management). To optimize the effectiveness of a three-component digital intervention targeting both members of the dyad as well as their relationship, we propose a novel Multi-Agent Reinforcement Learning (MARL) approach to personalize the delivery of interventions. By incorporating the domain knowledge, the MARL framework, where each agent is responsible for the delivery of one intervention component, allows for faster learning…

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Publication: Proceedings from SOUPS ’25 – Can You Walk Me Through It? Explainable SMS Phishing Detection using LLM-based Agents

Authors: Yizhu Wang, Haoyu Zhai, Chenkai Wang, Qingying Hao, Nick A Cohen, Roopa Foulger, Jonathan A Handler, and Gang Wang. Abstract SMS phishing poses a significant threat to users, especially older adults. Existing defenses mainly focus on phishing detection, but often cannot explain why the SMS is malicious to lay users. In this paper, we use large language models (LLMs) to detect SMS phishing while generating evidence-based explanations. The key challenge is that SMS is short, lacking the necessary context for security reasoning. We develop a prototype called SmishX which gathers external contexts (e.g., domain and brand information, URL redirection, and web screenshots) to augment the chain-of-thought (CoT) reasoning of LLMs. Then, the reasoning process is converted into a short explanation message to help users with their decision-making. Evaluation using real-world SMS datasets shows SmishX can achieve…

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Publication: Causal Directed Acyclic Graph-informed Reward Design

Authors: Luton Zou, Ziping Xu, Daiqi Gao, Susan Murphy Abstract It is well known that in reinforcement learning (RL) different reward functions may lead to the same optimal policy, while some reward functions can be substantially easier to learn. In this paper, we propose a framework for reward design by constructing surrogate rewards with mediators informed by causal directed acyclic graphs (DAGs), which are often available in real-world applications through domain knowledge. We show that under the surrogacy assumption, the proposed reward is unbiased and has lower variance than the primary reward. Specifically, we use an online reward design agent that adaptively learns the target surrogate reward in an unknown environment. Feeding the surrogate rewards to standard online learning oracles, we show that the regret bound can be improved. Our framework provides a theoretical improvement…

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Strategic Partnership: Synseer Partners with MindMics to Deliver Real-Time Heart Health Insights Through Everyday In-ear Devices

CAMBRIDGE, MA – May 29, 2025 — synseer, a leader in personalized health optimization, has announced a strategic collaboration with MindMics, the pioneer of in-ear infrasonic hemodynography (IH). Through this partnership, Synseer will integrate the MindMics Heart Health Platform into its intelligent wellness ecosystem—bringing real-time heart health insights directly to its users. “The integration of MindMics’ Heart Health Platform is a powerful addition to synseer’s mission of enabling real-time, data-driven wellness,” said John Martino II, CEO of synseer. “Our users will now have access to high-fidelity health data that was previously only available in clinical environments—empowering smarter decisions, every day.” MindMics’ patented technology captures low-frequency acoustic biosignals from within the ear canal, enabling non-invasive tracking of vital heart health metrics—including heart rate, heart rate variability, and physiological states related to stress and recovery. These clinically…

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Publication: Digital Twins for Just-in-Time Adaptive Interventions (JITAI-Twins): A Framework for Optimizing and Continually Improving JITAIs

Authors: Asim H. Gazi, Daiqi Gao, Susobhan Ghosh, Ziping Xu, Anna Trella, Predrag Klasnja, Susan A. Murphy Abstract Just-in-time adaptive interventions (JITAIs) are nascent precision medicine systems that extend personalized healthcare support to everyday life. A challenge in designing JITAIs is that personalized support often involves sophisticated decision-making algorithms. These decision-making algorithms can require numerous non-trivial design decisions that must be made between successive JITAI deployments (e.g., hyperparameter selection for an artificial intelligence algorithm). Making design decisions between deployments–rather than during deployment–ensures intervention fidelity and enhances the ability to replicate results. Yet, each deployment can be costly, precluding the use of A/B testing for every design decision. How should design decisions be made strategically between JITAI deployments? This paper introduces digital twins for just-in-time adaptive interventions (JITAI-Twins) to address this question. JITAI-Twins are “digital twins…

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Grant Funding: R41 AG092119

Continuation of VR technology development focused on the caregiver side of the dyad. Public Health Relevance Statement: The VR-CARES project is an innovative, collaborative effort that invites home health dementia caregivers into the design process of a virtual reality platform seeking to mitigate their work-related burden and social isolation by cultivating a virtual community of support. The co-created, caregiver-specific VR platform will serve as a safe, communal space where caregivers can remotely connect with their peers, share fun experiences together, access support, learn self-care and build resilience within a supportive virtual network to enhance their social and mental health and job satisfaction. Central to VR-CARES is the principle of user-led innovation, ensuring that the technology not only serves but is informed and successfully adopted by the very individuals it intends to benefit, an important standard…

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Publication: Returning Individualized Wearable Sensor Results to Older Adult Research Participants: A Pilot Study

Authors: Shelby L Bachman, Krista S Leonard-Corzo, Jennifer M Blankenship, Michael A Busa, Corinna Serviente, Matthew W Limoges, Robert T Marcotte, Ieuan Clay, Kate Lyden Abstract Background: Wearable sensors that monitor physical behaviors are increasingly adopted in clinical research. Older adult research participants have expressed interest in tracking and receiving feedback on their physical behaviors. Simultaneously, researchers and clinical trial sponsors are interested in returning results to participants, but the question of how to return individual study results derived from research-grade wearable sensors remains unanswered. In this study, we (1) assessed the feasibility of returning individual physical behavior results to older adult research participants and (2) obtained participant feedback on the returned results. Methods: Older adult participants (N = 20; ages 67-96) underwent 14 days of remote monitoring with 2 wearable sensors. We then used a semiautomated…

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