[HTML][HTML] Radiomics: the facts and the challenges of image analysis

S Rizzo, F Botta, S Raimondi, D Origgi… - European radiology …, 2018 - Springer
Radiomics is an emerging translational field of research aiming to extract mineable high-
dimensional data from clinical images. The radiomic process can be divided into distinct …

Segmentation and feature extraction in medical imaging: a systematic review

CL Chowdhary, DP Acharjya - Procedia Computer Science, 2020 - Elsevier
Image processing techniques being crucial towards analyzing and resolving issues in
medical imaging since last two decades. Medical imaging is a process or technique to find …

3D multi-attention guided multi-task learning network for automatic gastric tumor segmentation and lymph node classification

Y Zhang, H Li, J Du, J Qin, T Wang… - IEEE transactions on …, 2021 - ieeexplore.ieee.org
Automatic gastric tumor segmentation and lymph node (LN) classification not only can assist
radiologists in reading images, but also provide image-guided clinical diagnosis and …

Segmentation and image analysis of abnormal lungs at CT: current approaches, challenges, and future trends

A Mansoor, U Bagci, B Foster, Z Xu, GZ Papadakis… - Radiographics, 2015 - pubs.rsna.org
The computer-based process of identifying the boundaries of lung from surrounding thoracic
tissue on computed tomographic (CT) images, which is called segmentation, is a vital first …

Marginal loss and exclusion loss for partially supervised multi-organ segmentation

G Shi, L Xiao, Y Chen, SK Zhou - Medical Image Analysis, 2021 - Elsevier
Annotating multiple organs in medical images is both costly and time-consuming; therefore,
existing multi-organ datasets with labels are often low in sample size and mostly partially …

Liver CT sequence segmentation based with improved U-Net and graph cut

Z Liu, YQ Song, VS Sheng, L Wang, R Jiang… - Expert Systems with …, 2019 - Elsevier
Liver segmentation has always been the focus of researchers because it plays an important
role in medical diagnosis. However, under the condition of low contrast between a liver and …

Family of boundary overlap metrics for the evaluation of medical image segmentation

V Yeghiazaryan, I Voiculescu - Journal of Medical Imaging, 2018 - spiedigitallibrary.org
All medical image segmentation algorithms need to be validated and compared, yet no
evaluation framework is widely accepted within the imaging community. None of the …

Deep learning beyond cats and dogs: recent advances in diagnosing breast cancer with deep neural networks

JR Burt, N Torosdagli, N Khosravan… - The British journal of …, 2018 - academic.oup.com
Deep learning has demonstrated tremendous revolutionary changes in the computing
industry and its effects in radiology and imaging sciences have begun to dramatically …

Boundary-aware context neural network for medical image segmentation

R Wang, S Chen, C Ji, J Fan, Y Li - Medical image analysis, 2022 - Elsevier
Medical image segmentation can provide a reliable basis for further clinical analysis and
disease diagnosis. With the development of convolutional neural networks (CNNs), medical …

Automated abdominal multi-organ segmentation with subject-specific atlas generation

R Wolz, C Chu, K Misawa, M Fujiwara… - IEEE transactions on …, 2013 - ieeexplore.ieee.org
A robust automated segmentation of abdominal organs can be crucial for computer aided
diagnosis and laparoscopic surgery assistance. Many existing methods are specialized to …