International Journal of Advanced Multidisciplinary Research and Studies
Volume 4, Issue 6, 2024
A Conceptual Model for Using Machine Learning to Enhance Radiology Diagnostics
Author(s): Ernest Chinonso Chianumba, Nura Ikhalea, Ashiata Yetunde Mustapha, Adelaide Yeboah Forkuo
DOI: https://doi.org/10.62225/2583049X.2024.4.6.4075
Abstract:
Radiology plays a pivotal role in modern medicine by enabling accurate and early detection of a wide range of diseases. However, the increasing volume of medical imaging data, coupled with the shortage of trained radiologists, has introduced challenges related to diagnostic accuracy, timeliness, and efficiency. This paper presents a conceptual model for integrating machine learning (ML) into radiology diagnostics, aiming to enhance diagnostic precision, reduce errors, and optimize workflow efficiency. The proposed model leverages supervised and unsupervised learning algorithms to support various stages of the radiology workflow, including image acquisition, preprocessing, segmentation, feature extraction, classification, and decision support. Emphasis is placed on convolutional neural networks (CNNs) and deep learning architectures due to their proven efficacy in recognizing complex patterns in medical images. The model is designed to function as a decision support system that collaborates with radiologists, offering secondary opinions and highlighting potential abnormalities that may be overlooked in high-volume clinical environments. Furthermore, the conceptual model incorporates explainable AI (XAI) techniques to address the "black box" nature of deep learning, thereby improving model transparency and trustworthiness in clinical settings. Key challenges such as data heterogeneity, privacy, integration with existing Picture Archiving and Communication Systems (PACS), and regulatory compliance are also examined. To validate the model, simulated case studies using publicly available datasets (e.g., ChestX-ray14, BraTS) are proposed. These scenarios illustrate the model’s ability to classify and detect diseases such as pneumonia, breast cancer, and brain tumors with high sensitivity and specificity. This conceptual framework paves the way for the future implementation of intelligent, ML-driven radiology systems that augment human expertise rather than replace it. By emphasizing collaboration between human intelligence and artificial intelligence, the model supports the development of scalable, efficient, and ethically sound radiology diagnostic systems. The study concludes by outlining pathways for real-world deployment, including clinical trials, interdisciplinary partnerships, and continuous learning mechanisms that allow the model to evolve with new data and medical advancements.
Keywords: Radiology Diagnostics, Machine Learning, Deep Learning, Medical Imaging, Artificial Intelligence, Convolutional Neural Networks, Explainable AI, Diagnostic Accuracy, Decision Support System, Healthcare Technology
Pages: 1626-1644
Download Full Article: Click Here