Lab News

AI Could Enhance Rural Healthcare but Concerns Linger

Reporter Jeremy Pittari, of the Magnolia Tribune, a aper based in Flora, MS, explores the dual nature of artificial intelligence (AI) in enhancing healthcare delivery, particularly in rural Mississippi, while highlighting significant concerns regarding transparency and algorithmic bias. Experts, including Tina Hernandez-Boussard, PhD, were quoted that existing disparities in healthcare, especially affecting minority communities, could be exacerbated by flawed AI models. Dr. Hernandez-Boussard in particular discussed historical incorporation of race in healthcare algorithms, emphasizing the removal of race from assessments to improve equity in care. She also cautions against the unregulated use of AI in mental health, pointing to potential harms from chatbot interactions. Overall, while AI presents opportunities for improved healthcare access and management, addressing biases and ensuring patient safety remain critical challenges. To read the full story click here.

Best of Both Worlds: Combining General and Clinical Language Models for Classification and Text Generation

Our team’s ML4H 2025 work, "Best of Both Worlds: Combining General and Clinical Language Models for Classification and Text Generation", introduces a simple but powerful idea: you can adapt frontier general-purpose LLMs to clinical tasks without any training at all. Using a method we call proxy tuning, we blend the strengths of a general model with a clinically specialized model at decoding time. The takeaway is refreshingly pragmatic: you don’t need to retrain massive models to get clinical value. Proxy tuning offers an efficient, scalable path for bringing high-performance LLMs into real-world healthcare settings. Computer Science masters Student Sasha L. Ronaghi presented a poster on this work at ML4H Dec. 1-2, 2025.

Inaugural Summit on Clinical AI for Global Health Equity

In November 2025, Drs. Hernandez-Boussard and Ng had the privilege of participating in the Inaugural Summit on Clinical AI for Global Health Equity at the Harvard Medical School, Center for Bioethics. The meeting brought together global health leaders, clinicians, ethicists, technologists, and policymakers from across the world to grapple with a shared challenge: how to ensure clinical AI advances, not undermines, global health equity. Despite different regional realities, the summit made clear that global coordination is both possible and urgently needed. We left reminded that if we want AI to improve global health outcomes, we must design systems that are transparent, trusted, and truly inclusive.

Boussard Lab Members Present at AMIA Annual Symposium

The Boussard lab was well represented at AMIA's 2025 Annual Symposium held Nov. 15 - 19 in Atlanta, GA. Staff scientist Behzad Naderalvojoud, PhD, presented on "Graph-Augmented Transformer for Clinical Notes (GAT-CN): A Graph Neural Network Approach for Symptom Detection in Clinical Notes After Chemotherapy Initiation"; and second-year postdoc Yeon Mi Hwang, PhD, presented a poster on "Contextual Mapping of U.S. Healthcare for AI/ML Adoption", work supported by the SCAN Foundation. Congratulations to both Drs. Naderalvojoud and Hwang for their work!

Recent Publications

Guidance on Evaluating Predictive AI Medical Decisions Support

In a recent Viewpoint published in The Lancet Digital Health we evaluate various AI performance measures essential for supporting medical decisions. It highlights the significance of selecting appropriate metrics to avoid misleading outcomes that could adversely affect patient care and incur additional costs. We determined 32 performance measures across five domains (discrimination, calibration, overall performance, classification, and clinical utility). Using the ADNEX model, which predicts ovarian tumor malignancy, as a case study, we determined that performance assessment should prioritize discrimination, calibration, and clinical utility to improve decision-making in medical practice. Read the article here.

Cost-Benefit Analysis of Preventing Acute Care Use in Oncology Patients Using Medicare Claims Data

In research led by Sara Keller, a visiting scholar in the Boussard lab,  a predictive model for acute care use (ACU) in oncology patients receiving systemic therapy, was used to quantify costs. Utilizing Medicare claims data from 20,556 cancer patients treated at an academic medical center between 2010 and 2022, the analysis revealed that 18.58% of the patients experienced at least one ACU event, with average daily costs significantly higher for those affected (US $94.62) compared to those without ACU events (US $53.28). The predictive model demonstrated substantial financial impact, yielding projected savings of US $910,000 in the first year and increasing to US $9.46 million by year six, totaling approximately US $31.11 million over six years, based on an assumed 35% prevention rate for ACU events. These findings underscore the potential of predictive analytics to reduce costs associated with ACU in oncology, enhancing economic efficiency in cancer care while highlighting the need for further research into the associated health benefits. For more details read the research here.

Biologic Therapy and Risk of Mental Health Diagnosis in Patients with Hidradenitis Suppurativa

Hidradenitis suppurativa (HS) is a chronic inflammatory skin condition associated with elevated rates of comorbid mental health disorders.  Dr. Leandra A. Barnes's lab studied the association between biologic treatment for this condition and the risk of mental health diagnoses. A retrospective cohort study was conducted using de-identified electronic health records from the TriNetX network, which includes adults diagnosed with HS, with findings that suggest a potential benefit of biologics in improving mental health outcomes. This study highlights the importance of integrated care addressing both physical and mental health in HS management, emphasizing the role of biologic therapy in alleviating psychiatric comorbidities through effective disease control and reduced psychosocial stressors. For more details, read the study in the Journal of Investigative Dermatology here.

Synthetic Data, Synthetic Trust: Navigating Data Challenges in the Digital Revolution

In the evolving landscape of AI, the belief that more data automatically produce better models has fueled a rapid and often unchecked reliance on synthetic data to expand training datasets. Although synthetic data can help address real shortages in high quality clinical data, they often fall short in representing the nuances that matter most in medicine. Synthetic data aim to mirror population level distributions, yet they frequently fail to capture rare conditions, intersectional identities, and complex comorbidities. Even when they comply with privacy regulations such as HIPAA and GDPR, these limitations render synthetic data unfit for high stakes clinical modelling where patient level accuracy is non negotiable. A growing concern is the emergence of synthetic trust, where confidence in a model is based on artificially generated data that fail to reflect clinical validity or demographic reality. In our Viewpoint published in Lancet Digital Health, we call for greater caution in the use of synthetic data for clinical algorithms. We propose a set of actionable safeguards, including minimum standards for training data, fragility testing during model development, and clear disclosures when synthetic data contribute to model outputs. Together, these measures aim to strengthen accountability and preserve data integrity and fairness when synthetic data are used in health care.

Lectures & Talks

Ethics by Design: Building Responsible Governance and Equitable Health AI

A panel discussion on ethical design of AI featured Dr. Hernandez-Boussard, David Magnus, Danton Char, and Leo Anthony Celi, at the AI+Health 2025 conference. The takeaway: AI doesn’t create bias. It learns ours. This reinforces that governance, evaluation frameworks, patient partners, and stress-testing aren’t optional, they’re how we make AI worth its cost and how we make sure it doesn’t quietly replicate the inequities we say we want to solve.

The Coming Revolution: Equity in the Age of AI

Dr. Hernandez-Boussard was featured in a panel held Dec. 2, 2025 at the USC Annenberg Center for Health Care Journalism discussing, "The Coming Revolution: Equity in the Age of AI". Other panel members include Dr. Joseph Betancourt, the president of the Commonwealth Fund, and Katie Palmer, a health tech correspondent at STAT, on AI Healthcare Equity. For more visit our video library here.

Stanford Center for Precision Mental Health Symposium

Dr. Hernandez-Boussard spoke on "Advancing AI Research, Education, Policy, and Practice to Service the Collective Needs of Humanity" at the 5th Annual Stanford Precision Mental Health Symposium held Friday, Sept. 26, 2025. She also participated in a panel discussion. To view these talks visit our video library here.

Heart, Lung, Blood, and Sleep Disorders AI Workshop

Dr. Hernandez-Boussard spoke on 'AI for Clinical Decision Support' at a National Heart, Lung, Blood, and Sleep Disorders workshop held Sept. 9-10, 2025 at the NIH. Click here to view her talk and panel participation.

Women in Data Science Conference

Dr. Hernandez-Boussard spoke as the opening keynote speaker at Lane Medical Library's Women in Data Science Virtual Conference held May 14. The theme of the conference was "Shaping Data-Driven Medicine: Women in Health Informatics".

Last updated: Dec. 15, 2025