2021
DOI: 10.47093/2218-7332.2020.11.3.4-14
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Neural network-based segmentation model for breast cancer X-ray screening

Abstract: Diagnostic efficiency of breast cancer screening remains one of the most important issues in oncology and radiology. Artificial intelligence technologies are widely used in clinical medicine to effectively solve a number of technological and diagnostic problems. The aim. To develop segmentation neural network model for breast plain radiographs analysis with subsequent study of its clinical effectiveness. Materials and methods. The artificial intelligence-based system was developed to analyze X-ray mammography,… Show more

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Cited by 4 publications
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“…Thus, the use of traditional methods of intellectual data analysis of Data Mining, 7 including multi-convoluble CNN, 8 , 9 for information synthesis DSS for diagnosing oncopathology by histological images, does not always provide high functional efficiency of machine learning due to a number of scientific and methodological limitations: arbitrary conditions for the formation of histological images; significant intersection of recognition classes in the diagnostic features space; the space multidimensionality of diagnostic signs full of slide histological images; influence of uncontrolled perturbing factors. …”
Section: Introductionmentioning
confidence: 99%
“…Thus, the use of traditional methods of intellectual data analysis of Data Mining, 7 including multi-convoluble CNN, 8 , 9 for information synthesis DSS for diagnosing oncopathology by histological images, does not always provide high functional efficiency of machine learning due to a number of scientific and methodological limitations: arbitrary conditions for the formation of histological images; significant intersection of recognition classes in the diagnostic features space; the space multidimensionality of diagnostic signs full of slide histological images; influence of uncontrolled perturbing factors. …”
Section: Introductionmentioning
confidence: 99%