Avneet Sidhu’s research while affiliated with University Health Network and other places

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Publications (1)


Frequency of response of the Patient Activation Measure (PAM).
of themes and subthemes.
Baseline patient characteristics (n = 42).
The Extent to Which Artificial Intelligence Can Help Fulfill Metastatic Breast Cancer Patient Healthcare Needs: A Mixed-Methods Study
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March 2025

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1 Citation

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Avneet Sidhu

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The Artificial Intelligence Patient Librarian (AIPL) was designed to meet the psychosocial and supportive care needs of Metastatic Breast Cancer (MBC) patients with HR+/HER2− subtypes. AIPL provides conversational patient education, answers user questions, and offers tailored online resource recommendations. This study, conducted in three phases, assessed AIPL’s impact on patients’ ability to manage their advanced disease. In Phase 1, educational content was adapted for chatbot delivery, and over 100 credible online resources were annotated using a Convolutional Neural Network (CNN) to drive recommendations. Phase 2 involved 42 participants who completed pre- and post-surveys after using AIPL for two weeks. The surveys measured patient activation using the Patient Activation Measure (PAM) tool and evaluated user experience with the System Usability Scale (SUS). Phase 3 included focus groups to explore user experiences in depth. Of the 42 participants, 36 completed the study, with 10 participating in focus groups. Most participants were aged 40–64. PAM scores showed no significant differences between pre-survey (mean = 59.33, SD = 5.19) and post-survey (mean = 59.22, SD = 6.16), while SUS scores indicated good usability. Thematic analysis revealed four key themes: AIPL offers basic wellness and health guidance, provides limited support for managing relationships, offers limited condition-specific medical information, and is unable to offer hope to patients. Despite showing no impact on the PAM, possibly due to high baseline activation, AIPL demonstrated good usability and met basic information needs, particularly for newly diagnosed MBC patients. Future iterations will incorporate a large language model (LLM) to provide more comprehensive and personalized assistance.

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Citations (1)


... Recent randomized controlled trials (RCTs) and pilot studies indicate that AI tools may improve short-term psychological outcomes and empower self-care in cancer patients across a range of settings [5,6]. In China, for example, an AI-enabled mobile app ("AI-TA") significantly reduced psychological distress and enhanced self-efficacy and social support for young survivors of breast cancer, highlighting the potential benefits of such technology in upper-middle income environments [1]. ...

Reference:

Efficacy and Ethics of AI-Delivered Psychological Support for Chronic Illness in Low-Income Settings: A Mixed-Methods Study among Iranian Health Professionals
The Extent to Which Artificial Intelligence Can Help Fulfill Metastatic Breast Cancer Patient Healthcare Needs: A Mixed-Methods Study