[Online]Method for extracting and analyzing dosimetric data from Hitachi-type DICOM reports

Method for extracting and analyzing dosimetric data from Hitachi-type DICOM reports
ID:81 Submission ID:317 View Protection:PUBLIC Updated Time:2025-12-29 02:16:04 Hits:428 Online

Start Time:2025-12-30 15:45 (Asia/Amman)

Duration:15min

Session:[S5] Track 5: Emerging Trends of AI/ML » [S5-2] Track 5: Emerging Trends of AI/ML

Abstract
Currently, data from Hitachi machines' Digital Imaging and Communications in Medicine (DICOM) reports is used manually, which is time-consuming and error-prone. This limits the effectiveness of the analyses needed to manage radiation doses and improve medical practices. This paper therefore proposes an automated solution for the rapid and reliable extraction of key information, including CTDI (Computed Tomography Dose Index) and PDL (Product of Dose Length) indices, to facilitate the determination of Diagnostic Reference Levels (DRL). The methodology combines several steps: collecting real data from Picture Archiving and Communication System (PACS) reports; studying the structure of DICOM reports; developing an extraction algorithm in Python; and visualising the results via a web interface. The solution's architecture is based on the Django framework for data processing and Angular for the interactive presentation of results. The results obtained demonstrate the effectiveness of the platform in automating the extraction and analysis of DICOM data, significantly reducing processing time while providing healthcare professionals with clear, intuitive visualisation. This solution represents a significant advance in radiation dose management, transitioning from manual processes to an automated system that is faster and aligns with international radiation protection recommendations.
Keywords
DICOM, DICOM SR, DRL
Speaker
Mouhamed GUEYE
Phd Student University Alioune Diop of Bambey

Doctoral student in computer science, specializing in the extraction and analysis of medical images. My research focuses on the development of innovative solutions for processing and securing data from these images, notably through the integration of blockchain. Passionate about artificial intelligence, I'm also working on exploiting this data to design high-performance AI models capable of responding to complex problems in the medical field.

Submission Author
Mouhamed GUEYE University Alioune Diop of Bambey
Sada Anne Alioune Diop University of Bambey
Fallou SEYE University Alioune Diop of Bambey
Abdou Khadre DIOP University Alioune Diop of Bambey
Magatte DIAGNE Ahmadoul Khadim Hospital of Touba
Amadou Dahirou GUEYE University Amadou mahtar MBOW
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