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HARRISBURG, PA — Harrisburg University of Science and Technology (HU) researchers have played a key role in a newly published breakthrough in early lung cancer detection using artificial intelligence (AI). The study introduces an advanced deep learning framework developed at HU that leverages graph neural networks (GNNs) to identify subtle biological signals of lung cancer from blood plasma samples.

The model, called Metabolite Graph Neural Network (M-GNN), was designed by HU faculty and Ph.D. students in collaboration with BioMark Diagnostics, Inc., St. Boniface Hospital Research Centre, and Asper Clinical Research Centre. Researchers at HU collected additional data from public repositories and were responsible for designing and implementing the model architecture.

Maria Vaida

Dr. Maria Vaida, Assistant Professor of Data Science at Harrisburg University, led the research alongside Data Science Ph.D. students Jiawen Wu and Eyad Himdat.

“AI models are as powerful as the data and knowledge we provide them with,” said Dr. Vaida. “These models don’t inherently understand what each metabolite does, what normal levels look like, which pathways they act on, or what diseases they’re associated with. It’s our job as researchers to guide them by embedding accurate information about metabolic processes so that they can learn the complex interactions within pathways and ultimately detect subtle signals of disease, like early-stage lung cancer.”

Unlike conventional AI models that treat data as independent features, the M-GNN framework models the relationships between biological elements as a connected graph. This allows it to learn the structure of metabolic activity more accurately and detect early signs of disease with high precision. When tested on blood plasma samples provided by BioMark Diagnostics, the model achieved a 96% AUC, effectively distinguishing cancer from non-cancer samples.

The paper, titled “M-GMM: A Graph Neural Network Framework for Lung Cancer Detection Using Metabolomics and Heterogeneous Graph Modeling,” was published in a special edition of the International Journal of Molecular Sciences, focused on machine learning applications in bioinformatics and biomedicine.

ABOUT HARRISBURG UNIVERSITY

Harrisburg University was recently recognized by US News & World Report as one of the nation’s most innovative colleges. HU is accredited by the Middle States Commission on Higher Education and is a private, nonprofit university offering bachelor’s and graduate degree programs in science, technology, engineering, mathematics, nursing, and other health science fields. For additional information about HU’s affordable, demand-driven undergraduate and graduate programs, please call 717.901.5146 or email Connect@HarrisburgU.edu. Stay updated by following Harrisburg University on LinkedIn, Instagram, Facebook, and X (Twitter).

MEDIA CONTACT

Do you have questions about this story? Interested in lining up an interview? Please reach out to Dan Wilhelm, Communications Manager for Harrisburg University of Science and Technology, with all media inquiries.

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