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Jia-Yu Li

Bio: Jia-Yu Li is an academic researcher from Tianjin University. The author has contributed to research in topics: Breast cancer. The author has an hindex of 1, co-authored 1 publications receiving 6 citations.
Topics: Breast cancer

Papers
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Proceedings ArticleDOI
01 Dec 2018
TL;DR: This paper introduces some commonly used medical imaging methods for diagnosis of breast cancer, and based on them some recently proposed approaches for breast cancer detection with computer vision and machine learning techniques are investigated.
Abstract: Breast cancer is a malignant tumor that occurs in the glandular epithelium of the breast. It is considered to be one of the most common cancers affecting women in the world. However, there is not an effective way to cure breast cancer yet, the key to reducing the risk of death is the early detection and diagnosis of breast cancer. Accurate diagnosis of breast cancer normally requires analysis of medical images of different modalities. There is a great need of automated system that could analyze these images accurately and rapidly. In this paper, we introduce some commonly used medical imaging methods for diagnosis of breast cancer, and based on them we investigate some recently proposed approaches for breast cancer detection with computer vision and machine learning techniques. Finally, we compare and analyze the detection performance of different methods on histological images and mammograph images respectively.

19 citations


Cited by
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Journal ArticleDOI
TL;DR: The comparative analysis of machine learning, deep learning and data mining techniques being used for the prediction of breast cancer is presented to find out the most appropriate method that will support the large dataset with good accuracy of prediction.
Abstract: Breast cancer is type of tumor that occurs in the tissues of the breast. It is most common type of cancer found in women around the world and it is among the leading causes of deaths in women. This article presents the comparative analysis of machine learning, deep learning and data mining techniques being used for the prediction of breast cancer. Many researchers have put their efforts on breast cancer diagnoses and prognoses, every technique has different accuracy rate and it varies for different situations, tools and datasets being used. Our main focus is to comparatively analyze different existing Machine Learning and Data Mining techniques in order to find out the most appropriate method that will support the large dataset with good accuracy of prediction. The main purpose of this review is to highlight all the previous studies of machine learning algorithms that are being used for breast cancer prediction and this article provides the all necessary information to the beginners who want to analyze the machine learning algorithms to gain the base of deep learning.

72 citations

Journal ArticleDOI
TL;DR: A complete CAD system for mass detection and diagnosis, which consists of four steps where the preprocessing where the image is enhanced and the noise removed, and the support vector machine (SVM) is used to classify the abnormalities as malignant or benign.
Abstract: Mammography is currently the most powerful technique for early detection of breast cancer. To assist radiologists to better interpret mammogram images, computer-aided detection and diagnosis (CAD) systems have been proposed. This paper proposes a complete CAD system for mass detection and diagnosis, which consists of four steps. The first step consists of the preprocessing where the image is enhanced and the noise removed. In the second step, the abnormalities are segmented using the proposed HRAK algorithm. In the third step, the false positives are reduced using texture and shape features and the bagged trees classifier. Finally, the support vector machine (SVM) is used to classify the abnormalities as malignant or benign. The proposed CAD system is verified with both the MIAS and CBIS-DDSM databases. The experimental results proved to be successful. The accuracy detection rate achieves 93,15% for sensitivity and 0,467 FPPI for MIAS and 90,85% for sensitivity and 0,65 FPPI for CBIS-DDSM. The accuracy classification rate achieves 94,2% and the AUC 0,95 for MIAS and 90,44% and 0,9 for CBIS-DDSM.

30 citations

Journal ArticleDOI
TL;DR: The aim of this review article is to help to choose the appropriate breast cancer prediction techniques specifically in the Big data environment to produce effective and efficient result, because “Early detection is the key to prevention-in case of any cancer”.
Abstract: In recent years, big data in health care is commonly used for the prediction of diseases. The most common cancer is breast cancer infections of metropolitan Indian women as well as in women worldwide with a broadly factor occurrence among nations and regions. According to WHO, among 14% of all cancer tumours in women breast cancer is well-known cancer in women in India also. Few researches have been done on breast cancer prediction on Big data. Big data is now triggering a revolution in healthcare, resulting in better and more optimized outcomes. Rapid technological advancements have increased data generation; EHR (Electronic Health Record) systems produce a massive amount of patient-level data. In the healthcare industry, applications of big data will help to improve outcomes. However, the traditional prediction models have less efficiency in terms of accuracy and error rate. This review article is about the comparative assessment of complex data mining, machine learning, deep learning models used for identifying breast cancer because accuracy rate of any particular algorithm depends on various factors such as implementation framework, datasets(small or large),types of dataset used(attribute based or image based)etc. Aim of this review article is to help to choose the appropriate breast cancer prediction techniques specifically in the Big data environment to produce effective and efficient result, Because “Early detection is the key to prevention-in case of any cancer”.

12 citations

Journal ArticleDOI
TL;DR: In this paper , a systematic literature review on the deep learning-based methods for breast cancer detection is presented, which can guide practitioners and researchers in understanding the challenges and new trends in the field.
Abstract: Breast cancer is one of the precarious conditions that affect women, and a substantive cure has not yet been discovered for it. With the advent of Artificial intelligence (AI), recently, deep learning techniques have been used effectively in breast cancer detection, facilitating early diagnosis and therefore increasing the chances of patients’ survival. Compared to classical machine learning techniques, deep learning requires less human intervention for similar feature extraction. This study presents a systematic literature review on the deep learning-based methods for breast cancer detection that can guide practitioners and researchers in understanding the challenges and new trends in the field. Particularly, different deep learning-based methods for breast cancer detection are investigated, focusing on the genomics and histopathological imaging data. The study specifically adopts the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA), which offer a detailed analysis and synthesis of the published articles. Several studies were searched and gathered, and after the eligibility screening and quality evaluation, 98 articles were identified. The results of the review indicated that the Convolutional Neural Network (CNN) is the most accurate and extensively used model for breast cancer detection, and the accuracy metrics are the most popular method used for performance evaluation. Moreover, datasets utilized for breast cancer detection and the evaluation metrics are also studied. Finally, the challenges and future research direction in breast cancer detection based on deep learning models are also investigated to help researchers and practitioners acquire in-depth knowledge of and insight into the area.

6 citations