Deep neural models for automated multi-task diagnostic scan management - Quality enhancement, view classification and report generation

dc.contributor.authorKarthik, K.
dc.contributor.authorKamath S․, S.
dc.date.accessioned2026-02-04T12:28:39Z
dc.date.issued2022
dc.description.abstractThe detailed physiological perspectives captured by medical imaging provides actionable insights to doctors to manage comprehensive care of patients. However, the quality of such diagnostic image modalities is often affected by mismanagement of the image capturing process by poorly trained technicians and older/poorly maintained imaging equipment. Further, a patient is often subjected to scanning at different orientations to capture the frontal, lateral and sagittal views of the affected areas. Due to the large volume of diagnostic scans performed at a modern hospital, adequate documentation of such additional perspectives is mostly overlooked, which is also an essential key element of quality diagnostic systems and predictive analytics systems. Another crucial challenge affecting effective medical image data management is that the diagnostic scans are essentially stored as unstructured data, lacking a well-defined processing methodology for enabling intelligent image data management for supporting applications like similar patient retrieval, automated disease prediction etc. One solution is to incorporate automated diagnostic image descriptions of the observation/findings by leveraging computer vision and natural language processing. In this work, we present multi-task neural models capable of addressing these critical challenges. We propose ESRGAN, an image enhancement technique for improving the quality and visualization of medical chest x-ray images, thereby substantially improving the potential for accurate diagnosis, automatic detection and region-of-interest segmentation. We also propose a CNN-based model called ViewNet for predicting the view orientation of the x-ray image and generating a medical report using Xception net, thus facilitating a robust medical image management system for intelligent diagnosis applications. Experimental results are demonstrated using standard metrics like BRISQUE, PIQE and BLEU scores, indicating that the proposed models achieved excellent performance. Further, the proposed deep learning approaches enable diagnosis in a lesser time and their hybrid architecture shows significant potential for supporting many intelligent diagnosis applications. © 2021 IOP Publishing Ltd.
dc.identifier.citationBiomedical Physics and Engineering Express, 2022, 8, 1, pp. -
dc.identifier.urihttps://doi.org/10.1088/2057-1976/ac3add
dc.identifier.urihttps://idr.nitk.ac.in/handle/123456789/22853
dc.publisherIOP Publishing Ltd
dc.subjectAutomation
dc.subjectDeep neural networks
dc.subjectDiagnosis
dc.subjectImage enhancement
dc.subjectImage segmentation
dc.subjectMedical imaging
dc.subjectNatural language processing systems
dc.subjectPredictive analytics
dc.subjectDeep learning
dc.subjectDiagnostic images
dc.subjectDiagnostic scans
dc.subjectEnhancement
dc.subjectESRGAN
dc.subjectMedical report
dc.subjectMulti tasks
dc.subjectNeural modelling
dc.subjectOrientation
dc.subjectViewnet
dc.subjectInformation management
dc.subjectArticle
dc.subjectcomparative study
dc.subjectconvolutional neural network
dc.subjectdeep neural network
dc.subjectdiagnostic accuracy
dc.subjectesrgan
dc.subjecthuman
dc.subjectimage analysis
dc.subjectimage enhancement
dc.subjectimage processing
dc.subjectimage quality
dc.subjectimage retrieval
dc.subjectimage segmentation
dc.subjectthorax radiography
dc.subjectxception net
dc.titleDeep neural models for automated multi-task diagnostic scan management - Quality enhancement, view classification and report generation

Files

Collections