Автоматизированная система классификации снимков УЗИ поджелудочной железы на основе метода посегментного спектрального анализа
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Научный журнал Моделирование, оптимизация и информационные технологииThe scientific journal Modeling, Optimization and Information Technology
Online media
issn 2310-6018

Automated system for classifying pancreatic ultrasound images based on the segment-by-segment spectral analysis method

idFilist S.A. Kondrashov D.S.   Sukhomlinov A.Y.   idShulga L.V. Al-Darraji C.H.   Belozerov V.A.  

UDC 616.37, 004.932, 004.89
DOI: 10.26102/2310-6018/2023.40.1.021

  • Abstract
  • List of references
  • About authors

Classification of ultrasound images is the prevailing tool in the diagnosis of many pancreas diseases. It takes years of experience and training for a doctor to interpret an ultrasound image. Therefore, the development of models, methods and algorithms for improving the reliability and quality of interpretation of ultrasound images through the use of specialized software tools that reduce the risk of diagnostic errors is a relevant issue. The proposed method involves the segmentation of ultrasound images into segments of prescribed size of a rectangular shape and their correlation to one of three classes: oncology, pancreatitis, indifferent class. Classification is carried out by means of "strong" and "weak" classifiers. For "weak" classifiers, the Walsh-Hadamard transform is employed in the formation of descriptors. Descriptors are calculated for three "weak" classifiers. For the first "weak" classifier, the spectral coefficients of the Walsh-Hadamard transform are used, calculated for the window of the entire segment. After that, the descriptors are calculated for other "weak" classifiers, which are windows with sizes that are two and four times smaller than the sizes of the original window. The classifier consists of three independently trained neural networks – "weak" classifiers. To combine the output data of neural networks, an averaging block over the ensemble is used. Software has been developed for classifying ultrasound images which helps to create a database for the "oncology" and "pancreatitis" class segments, determine the two-dimensional Walsh-Hadamard spectrum of ultrasound image segments, train fully connected neural networks and conduct exploratory analysis to study the relevance of two-dimensional spectral coefficients. Experimental studies on the classification of ultrasound images containing oncology and pancreatitis showed an average accuracy of oncology detection – 88.4 %, and pancreatitis – 85.7 %. Errors of the second type averaged 10.2 % when pancreatitis was detected and 5.2 % when oncology was detected. To set up and test the classifiers, real data from pancreatic ultrasound were used.

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Filist Sergey Alekseevich
Doctor of Technical Sciences Professor

ORCID |

Southwest State University

Kursk, Russian Federation

Kondrashov Dmitry Sergeevich

Southwest State University

Kursk, Russian Federation

Sukhomlinov Artem Yurievich

Southwest State University

Kursk, Russian Federation

Shulga Leonid Vasilievich
Doctor of Medical Sciences Professor

ORCID |

Southwest State University

Kursk, Russian Federation

Al-Darraji Chasib Hasan

Email: chasibabooddy@gmail.com

Southwest State University
Diyala University

Kursk, Russian Federation

Belozerov Vladimir Anatolyevich
Candidate of Medical Sciences
Email: b9102107495@yandex.ru

Kursk Regional Multidisciplinary Clinical Hospital

Kursk, Russian Federation

Keywords: ultrasound, pancreas, oncology, pancreatitis, disease detection, segmentation of ultrasound images, neural network, classification of ultrasound images

For citation: Filist S.A. Kondrashov D.S. Sukhomlinov A.Y. Shulga L.V. Al-Darraji C.H. Belozerov V.A. Automated system for classifying pancreatic ultrasound images based on the segment-by-segment spectral analysis method. Modeling, Optimization and Information Technology. 2023;11(1). Available from: https://moitvivt.ru/ru/journal/pdf?id=1302 DOI: 10.26102/2310-6018/2023.40.1.021 (In Russ).

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Full text in PDF

Received 30.12.2022

Revised 15.02.2023

Accepted 06.03.2023

Published 07.03.2023