AI Tool Analyzes Bone Marrow Slides to Personalize Multiple Myeloma Treatment for Newly Diagnosed Patients

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Researchers at Sylvester Comprehensive Cancer Center developed an AI-based tool that identifies immune-related signals in routine bone marrow biopsy slides to predict which newly diagnosed multiple myeloma patients will benefit most from specific therapies. The GigaTIME model analyzed 212 patients and found those with low CD16 levels had significantly better outcomes with daratumumab-based treatment.

AI-Based Tool Identifies Hidden Immune Signals in Bone Marrow Biopsy Slides

Researchers at Sylvester Comprehensive Cancer Center, part of the University of Miami Miller School of Medicine, have developed an AI tool that could transform how physicians approach multiple myeloma treatment decisions. The AI-based tool analyzes routine bone marrow biopsy slides to uncover immune-related signals that predict which newly diagnosed multiple myeloma patients will respond best to specific therapies, including immunotherapy and stem cell transplantation

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. The findings, presented by Sylvester research scientist Arjun Raj Rajanna at the 2026 ASCO annual meeting, represent a significant step toward precision-based treatment strategies in blood cancer care

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Source: News-Medical

Source: News-Medical

The challenge physicians face is stark: while treatment options for multiple myeloma have expanded rapidly, determining which patients need intensive therapies and which may safely avoid them remains difficult. "We are using AI to move toward a more precision-based approach for patients with multiple myeloma," Rajanna explained. "Instead of asking which drug combination is best overall, we are using AI to ask which treatment strategy best fits the biology of each individual patient"

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GigaTIME Model Profiles Immune Features to Predict Patient Response

The study employed a foundational model called GigaTIME to profile immune features from bone marrow biopsy slides of 212 newly diagnosed multiple myeloma patients enrolled in the HealthTree Foundation registry. The AI model estimated levels of CD16, a biomarker associated with natural killer cells, directly from standard biopsy images

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. Researchers then tracked how these patients responded to either standard therapy with bortezomib, lenalidomide and dexamethasone (VRd) or D-VRd, which adds daratumumab to the regimen.

Daratumumab is a monoclonal antibody that helps the immune system's natural killer cells recognize and attack myeloma cells, making immune biomarkers particularly relevant for predicting treatment success. The analysis revealed striking differences: patients with low AI-predicted CD16 levels who received VRd without transplant experienced significantly shorter time to next treatment. In contrast, patients in the low-CD16 group had markedly better outcomes when treated with D-VRd, with 86.8% remaining event-free at 18 months

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Understanding Immune Biology to Personalize Treatment Decisions

The research builds on work presented at last year's American Society of Hematology Annual Meeting, where the team demonstrated an AI model capable of reconstructing molecular features of the bone marrow from routine biopsy slides. "Even patients with the same clinical stage or genetic risk can have very different immune microenvironments, treatment sensitivities and long-term outcomes," said study senior author C. Ola Landgren, M.D., Ph.D., director of the Sylvester Myeloma Institute

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Source: Newswise

Source: Newswise

Understanding immune biology at diagnosis may be just as important as understanding the tumor's genetic makeup, Landgren emphasized. The bone marrow microenvironment—the complex mix of immune cells and signaling molecules surrounding cancer cells—may help explain why patients with multiple myeloma often respond very differently to the same therapies

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Clinical Implications for Immunotherapy and Stem Cell Transplantation

The study's primary endpoint was time to next treatment, measuring how long patients remained on their initial therapy before needing to switch. "For patients, longer time to next treatment often translates directly into longer periods of disease control, improved quality of life, fewer treatment-related toxicities and less disruption to daily life," Landgren noted

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. This matters particularly for decisions around autologous stem cell transplantation, which can extend the time before cancer returns but carries significant side effects and can temporarily weaken the immune system, increasing infection risk.

Landgren hopes the study demonstrates that AI can move beyond simply automating workflows to become a tool for biologic discovery and clinical decision support. "This may represent the beginning of a new era of AI-enabled digital pathology in myeloma," he said

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. The ability to predict patient response using existing bone marrow biopsy slides means physicians could potentially identify optimal treatment strategies without additional invasive procedures or costly molecular testing, making personalized care more accessible to newly diagnosed multiple myeloma patients.

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