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Journal ArticleDOI

Early diagnosis and detection of breast cancer.

TLDR
It can be concluded that the use of a computer system for tumor diagnosis in mammogram based on various methods of image processing can help doctors in decision-making, while theUse of thermal imaging in the pre-screening phase would significantly reduce the list of women for screening mammograms.
Abstract
Background Breast cancer is the most common malignancy in women. It is often characterized by a lack of early symptoms, which results in late detection of the disease. Detection at advanced stages of the decease implies the treatment is more difficult and uncertain. The appropriate screening programs have been conducted within the organized preventive examinations and have made significant contributions to the early breast cancer detection. Objective It is necessary to improve the screening process in order to reduce the percentage of female population that is not covered by screening programs and increase the number of early-detected breast cancers. The improvement of the screening program may be reflected in the following: more efficient determination of the list of the women who have to undergo preventive examination, introduction of screening program in thermography as a diagnostic method applied in pre-screening stage, more efficient analysis of mammograms and continuous follow up of patients. Methods The identification of target population for breast cancer screening program has been based on the age of women. The improvement of the early breast cancer diagnosis process proposed in this paper is reflected in more efficient determination of the group of women who have to undergo preventive examination based on the factors affecting the occurrence of breast cancer. Inclusion of the pre-screening phase in which thermal imaging could be applied and software support to mammographic detection of tumor are suggested. Results This paper describes the breast cancer, current screening program and techniques for early-stage breast cancer detection, module of medical information system MEDIS.NET for creating screening list based on the analysis of risk factors affecting the occurrence of breast cancer, mammography and role of thermal imaging in the process of early breast cancer detection. It also presents an overview on important achievements in computer-aided detection and diagnosis of breast cancer in mammography and thermography. Conclusions Based on the obtained results, dynamics of preventive examinations for particular groups of women that is different from the standard two-year examinations, can be successfully defined. It can be concluded that the use of a computer system for tumor diagnosis in mammogram based on various methods of image processing can help doctors in decision-making, while the use of thermal imaging in the pre-screening phase would significantly reduce the list of women for screening mammograms.

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Citations
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Journal ArticleDOI

Preparation of Carbon Quantum Dots- Quinic Acid for Drug Delivery of Gemcitabine to Breast Cancer Cells

TL;DR: Taken together, Quinic acid conjugated N-CQDs exhibited promising properties such as excellent luminescent properties and high tumor accumulation, suggesting that they could be excellent candidates as multifunctional theranostic agents.
Journal ArticleDOI

Implementing a central composite design for the optimization of solid phase microextraction to establish the urinary volatomic expression: a first approach for breast cancer.

TL;DR: The results obtained suggest the possibility to identify endogenous metabolites as a platform to discovery potential BC biomarkers and paves a way to explore the related metabolomic pathways in order to improve BC diagnostic tools.
Journal ArticleDOI

Small nucleolar RNA and its potential role in breast cancer – A comprehensive review

TL;DR: In this paper, the role of small nucleolar RNAs (snoRNAs) in breast cancer pathology is discussed, including the regulation, biological function, signaling pathways, and clinical utility of abnormally expressed snoRNAs in BC.
Journal ArticleDOI

Optical spectroscopy-based imaging techniques for the diagnosis of breast cancer: A novel approach

TL;DR: There have been substantial advancements in optical spectroscopy-based imaging techniques in recent years as mentioned in this paper, and these developments can potentially herald a transformational change in the diagnostic path of medical imaging.
References
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Journal ArticleDOI

Detection of microcalcifications in digital mammograms using wavelet filter and Markov random field model.

TL;DR: This work concludes that the texture feature based on Markov random field parameters combined with properly designed auxiliary features extracted from the texture context of the MCs can work outstandingly in the recognition of MCs in digital mammograms.
Journal ArticleDOI

Colour image segmentation using fuzzy clustering techniques and competitive neural network

TL;DR: The task of segmenting any given colour image using fuzzy clustering algorithms and competitive neural network is explained and the results obtained by CNN are proven to be better than the fuzzy clustered technique.
Journal ArticleDOI

On digital mammogram segmentation and microcalcification detection using multiresolution wavelet analysis

TL;DR: A multiresolution wavelet analysis (MWA) and nonstationary Gaussian Markov random field (GMRF) technique is introduced for the detection of microcalcifications with high accuracy and the approach has been tested with a number of mammographic images.
Proceedings ArticleDOI

Computer-aided detection and diagnosis of masses and clustered microcalcifications from digital mammograms

TL;DR: An 'intelligent' workstation to assist radiologists in diagnosing breast cancer from mammograms is developed, which requires as input ratings of 14 different radiographic features of the mammogram that were determined subjectively by a radiologist.

A Modified k-means Algorithm to Avoid Empty

Clusters Malay, +1 more
TL;DR: In this article, a modified version of the k-means algorithm is presented, which is semantically equivalent to the original k -means and there is no performance degradation due to incorporated modification.
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