Prostate cancer detection using e-nose and AI for high probability assessment
Juan B. Talens, José Pelegrí-Sebastiá, T. Sogorb, J. L. Ruiz
Abstract
This research aims to develop a diagnostic tool that can quickly and accurately detect prostate cancer using electronic nose technology and a neural network trained on a dataset of urine samples from patients diagnosed with both prostate cancer and benign prostatic hyperplasia, which incorporates a unique data redundancy method. By analyzing signals from these samples, we were able to significantly reduce the number of unnecessary biopsies and improve the classification method, resulting in a recall rate of 91% for detecting prostate cancer. The goal is to make this technology widely available for use in primary care centers, to allow for rapid and non-invasive diagnoses.
Topics & Concepts
Prostate cancerHealth informaticsMedical diagnosisComputer scienceMedicineArtificial intelligenceProstateArtificial neural networkCancerMachine learningMedical physicsRadiologyPathologyInternal medicinePublic healthAdvanced Chemical Sensor TechnologiesIdentification and Quantification in FoodFood Supply Chain Traceability