Associate Prof. Eddie Ng Yin Kwee, the corresponding author, emphasizes: “Our study’s findings, and the development of PINN, centers around AI’s ability to swiftly and accurately analyze vast datasets, specifically thousands of infrared breast scans. We also benefited from machine learning when calibrating PINN as it made the program easily trainable, aiding it to recognize patterns and generalize well to new, unseen data, making it adaptable and reliable. PINN could assist in the early identification of potential abnormalities in breast tissues, not only contributing to better treatment outcomes but also streamlines the screening process, allowing healthcare professionals to prioritize complex cases.”
Developed in consultation with healthcare professionals in Singapore, PINN is set to evolve further. The researchers aim to make it a stand-alone application, running on a portable device equipped with a graphics processing unit and infrared camera. This advancement holds promise for making routine breast examinations more accessible and simpler, potentially revolutionizing breast imaging globally.