Review on Deep Learning based Medical Image Processing
A Agarwal, R Kumar, M Gupta - 2022 IEEE International …, 2022 - ieeexplore.ieee.org
Deep learning (DL) has made extensive progress in many exploration regions. Computer
vision is one of the most trending fields advancing due to extensive research in develo** …
vision is one of the most trending fields advancing due to extensive research in develo** …
Application of machine learning techniques for characterization of ischemic stroke with MRI images: a review
Magnetic resonance imaging (MRI) is a standard tool for the diagnosis of stroke, but its
manual interpretation by experts is arduous and time-consuming. Thus, there is a need for …
manual interpretation by experts is arduous and time-consuming. Thus, there is a need for …
A deep-learning approach for segmentation of liver tumors in magnetic resonance imaging using UNet++
J Wang, Y Peng, S **g, L Han, T Li, J Luo - BMC cancer, 2023 - Springer
Objective Radiomic and deep learning studies based on magnetic resonance imaging (MRI)
of liver tumor are gradually increasing. Manual segmentation of normal hepatic tissue and …
of liver tumor are gradually increasing. Manual segmentation of normal hepatic tissue and …
Inter extreme points geodesics for end-to-end weakly supervised image segmentation
We introduce InExtremIS, a weakly supervised 3D approach to train a deep image
segmentation network using particularly weak train-time annotations: only 6 extreme clicks …
segmentation network using particularly weak train-time annotations: only 6 extreme clicks …
Lesion segmentation in lung CT scans using unsupervised adversarial learning
Lesion segmentation in medical images is difficult yet crucial for proper diagnosis and
treatment. Identifying lesions in medical images is costly and time-consuming and requires …
treatment. Identifying lesions in medical images is costly and time-consuming and requires …
Joint vestibular schwannoma enlargement prediction and segmentation using a deep multi‐task model
Objective To develop a deep‐learning‐based multi‐task (DMT) model for joint tumor
enlargement prediction (TEP) and automatic tumor segmentation (TS) for vestibular …
enlargement prediction (TEP) and automatic tumor segmentation (TS) for vestibular …
The unresolved methodological challenge of detecting neuroplastic changes in astronauts
After completing a spaceflight, astronauts display a salient upward shift in the position of the
brain within the skull, accompanied by a redistribution of cerebrospinal fluid. Magnetic …
brain within the skull, accompanied by a redistribution of cerebrospinal fluid. Magnetic …
Machine learning for the detection and segmentation of benign tumors of the central nervous system: a systematic review
P Windisch, C Koechli, S Rogers, C Schröder… - Cancers, 2022 - mdpi.com
Simple Summary Machine learning in radiology of the central nervous system has seen
many interesting publications in the past few years. Since the focus has largely been on …
many interesting publications in the past few years. Since the focus has largely been on …
[HTML][HTML] Use of super resolution reconstruction MRI for surgical planning in Placenta accreta spectrum disorder: Case series
Introduction Comprehensive imaging using ultrasound and MRI of placenta accreta
spectrum (PAS) aims to prevent catastrophic haemorrhage and maternal death. Standard …
spectrum (PAS) aims to prevent catastrophic haemorrhage and maternal death. Standard …
[HTML][HTML] A practical guide to manual and semi-automated neurosurgical brain lesion segmentation
The purpose of the article is to provide a practical guide for manual and semi-automated
image segmentation of common neurosurgical cranial lesions, namely meningioma …
image segmentation of common neurosurgical cranial lesions, namely meningioma …