
Smart Medicine: The Promise and Peril of AI in Healthcare

To the untrained eye, the grainy medical images vaguely look like knees, black and white scans of what might be muscle, bone, and green wisps of something else.
But to Juan Shan, PhD, an associate professor of computer science in the Seidenberg School of Computer Science and Information Systems at ý, the photos are validation of a decades-long hunch: robots can read an MRI.

ýThe method does not require any human intervention,ý Shan wrote in a detailing her machine learning tool for identifying bone marrow lesions (BMLs), early indicators of knee osteoarthritis. In a standard MRI, BMLs appear as pixelated clouds. In Shanýs model, they pop in vibrant hues of color.
ýThis work provides a possible convenient tool to assess BML volumes efficiently in larger MRI data sets to facilitate the assessment of knee osteoarthritis progression,ý Shan wrote.
As artificial intelligence (AI) reshapes how medicine is practiced and delivered, Pace researchers like Shan are shaping the technologyýand the guardrailsýdriving the revolution in clinical care. Computer scientists at Pace harness machine learning to build tools to in pediatric care and strengthen clinical decision-making. Social scientists work to in AI-supported applications. And students are taking their skills to the field, addressing challenges like .
Collectively, their goal isnýt to replace people in lab coats. Rather, itýs to facilitate doctorsý work and make medicine more precise, efficient, and equitable.
ýIn healthcare, AI enables earlier disease detection, personalized medicine, improves patient and clinical outcomes, and reduces the burden on healthcare systems,ý said Soheyla Amirian, PhD, an assistant professor of computer science at Seidenberg who, like Shan, trains computers to diagnose illnesses.
ýNew York is a world-class hub for innovation, healthcare, and advanced technologies, and its diversity makes it the perfect place to explore how fair and responsible AI can address inequities across populations,ý Amirian said.
In Shanýs lab, that work begins below the kneecap. Together with colleagues, she feeds medical imagesýMRIs and X-raysýinto machine learning models to train them to detect early signs of joint disease. Theyýre looking to identify biomarkersýcartilage, bone marrow lesions, effusionsýthat might indicate whether a patient has or is prone to developing osteoarthritis, the fourth leading cause of disability in the world. Current results indicate her models generate results that are highly correlated with manual labels marked by physicians.
ýWe want to apply the most advanced techniques in machine learning to the medical domain, to give doctors, radiologists, and other practitioners a second opinion to improve their diagnosis accuracy."
Shanýs vision is to create diagnostic tools that would supplement human interventions and pre-screen patients who are at lower risk of disease.
ýWe want to apply the most advanced techniques in machine learning to the medical domain, to give doctors, radiologists, and other practitioners a second opinion to improve their diagnosis accuracy,ý she said. ýOur goal is to automate time-consuming medical tasksýlike manual labeling of scansýto free doctors for other, more human tasks.ý
Pace has invested heavily in training future leaders in AI and machine learning applications. A key focal point for these efforts has been in the healthcare sector, where rapid innovations are changing the patient experience for the better. Over the last decade, Pace researchers have published more than addressing questions in psychology, biology, and medicine. Much of this work has taken advantage of AI applications.
Information technology professor Yegin Genc, PhD, and PhD student Xing Chen explored the use of AI in clinical psychology. Computer science professor D. Paul Benjamin, PhD, and PhD student Gunjan Asrani used machine learning to analyze features of patientsý speech to assess diagnostic criteria for cluttering, a fluency disorder.
Lu Shi, PhD, an associate professor of health sciences at the College of Health Professions, even uses AI to brainstorm complex healthcare questions for his studentsýlike whether public health insurance should cover the cost of birth companions (doulas) for undocumented migrant women.
ýIn the past, that kind of population-wide analysis could be an entire dissertation project for a PhD student, who would have spent up to two years reaching a conclusion,ý Shi said. ýWith consumer-grade generative AI, answering a question like that might take a couple of days.ý
Paceýs efforts complement rapid developments in healthcare technology around the world. Today, AI is helping emergency dispatchers in Denmark , accelerating drug discoveries in the US, and revolutionizing how .

Amirian, like Shan, is developing AI-powered tools for analyzing the knee. Her work, which she said has significant potential for commercialization, aims to assist clinicians in diagnosing and monitoring osteoarthritis with accurate and actionable insights. ýIts scalability and ability to integrate with existing healthcare systems make it a promising innovation for widespread adoption,ý she said.
A key focus for Amirian is . ýReducing healthcare disparities is central to my work,ý she said. As head of the at Pace, Amirian leads a multidisciplinary team of computer scientists, informaticians, physicians, AI experts, and students to create AI models that work well for diverse populations.
Intentionality is essential. ýThe objective is to develop algorithms that minimize bias related to sex, ethnicity, or socioeconomic status, ensuring equitable healthcare outcomes,ý Amirian said. ýThis work is guided by the principle that AI should benefit everyone, not just a privileged few.ý
Zhan Zhang, PhD, another Pace computer science researcher, has won accolades for his contribution to the field of AI and medicine. Like Amirian and Shan, he shares the view that while AI holds great potential, it must be developed with caution. In a recent literature review, he warned that ýbias, whether in data or algorithms, is a cardinal ethical concerný in medicine.
ýData bias arises when data used to train the AI models are not representative of the entire patient population,ý Zhang wrote in a for the journal, Frontiers in Computer Science. ýThis can lead to erroneous conclusions, misdiagnoses, and inappropriate treatment recommendations, disproportionately affecting underrepresented populations.ý
ýWhile AI offers immense opportunities, addressing challenges like algorithmic bias, data privacy, and transparency is crucial.ý
Preventing bias in AI healthcare applications wonýt be easy. For one, privacy concerns can create a bottleneck for securing data for research. Thereýs also a simple numbers challenge. Unlike AI models trained on public image benchmarks, which draw on millions of inputs, training AI models on medical images is limited by a dearth of information, said Shan. While there are efforts to augment the dataset and generate synthetic data, the relatively small size of the available medical datasets is still a barrier to fully unlocking the potential of deep learning models.
Solving these challenges will be essential for AIýs potential in healthcare to be realized. ýWhile AI offers immense opportunities, addressing challenges like algorithmic bias, data privacy, and transparency is crucial,ý Amirian said.
Simply put, AI is both a threat and an opportunity. ýThe opportunity lies in its potential to revolutionize industries, improve efficiency, and solve global challenges,ý Amirian said. ýBut it becomes a threat if not used ethically and responsibly. By fostering ethical frameworks and interdisciplinary collaboration, we can ensure AI serves as a tool for good, promoting equity and trust.ý
Above all, she said, as AI offers ýsmarter solutionsý to many modern problems, itýs also ýchallenging us to consider its societal and ethical implications.ý
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