Applications | ||
Survey and review | ||
Theory | ||
README.md |
Must-read papers
本仓库主要分享AI结合医疗影像(CT/核磁/超声)领域值得一读的文章和资源😊
集中在超声影像和深度学习
Content
Theory
Machine Learning Theory
Deep Learning Theory
Radiomics Theory
-
医学成像技术,重庆大学出版社,(2005) *[read]*
郭兴明
Applications
Machine Learning
-
Machine learning-based phenogrouping in heart failure to identify responders to cardiac resynchronization therapy, European Journal of Heart Failure (2018) *[read]*
Maja Cikes1, Sergio Sanchez-Martinez, Brian Claggett, Nicolas Duchateau, Gemma Piella, Constantine Butakoff, Anne Catherine Pouleur, Dorit Knappe, Tor Biering-Sørensen, Valentina Kutyifa, Arthur Moss, Kenneth Stein, Scott D. Solomon, and Bart Bijnens
-
Cardiologist-level arrhythmia detection and classification in ambulatory electrocardiograms using a deep neural network, Nature Medicine 25, 65–69(2019) *[read]*
Awni Y. Hannun Pranav Rajpurkar, Masoumeh Haghpanahi, Geoffrey H. Tison, Codie Bourn, Mintu P. Turakhia and Andrew Y. Ng
-
Performance and Reading Time of Automated Breast US with or without Computer-aided, Radiology 292:540–549(2019) *[read]*
Shanling Yang, MD • Xican Gao, MD • Liwen Liu, PhD, MD • Rui Shu, MD • Jingru Yan, MD • Ge Zhang, MD • Yao Xiao, MD • Yan Ju, MS • Ni Zhao, MD • Hongping Song, PhD, MD
-
Impact of Data Presentation on Physician Performance Utilizing ArtificialIntelligence-Based Computer-Aided Diagnosis and DecisionSupport Systems, Journal of Digital Imaging 32:408–416 (2019) *[read]*
L. Barinov1,2,3 A. Jairaj1 M. Becker3,4 SSeymour1 E. Lee3,4 A. Schram3,4&E. Lane4&A. Goldszal3,4 D. Quigley4 L. Paster3,4
-
基于支持向量机的肝脏肿瘤良、恶性识别研究,浙江大学,硕士学位论文(2012) *[read]*
叶萌萌
Deep Learning
-
基于深度学习的医学CT图像中器官的区域检测, 南京师范大学,硕士学位论文 (2018) *[read]*
嵇伟伟
-
Management of Thyroid Nodules Seen on US Images:Deep Learning May Match Performance of Radiologists, Radiology 292:695–701(2019) *[read]*
Mateusz Buda, MSc • Benjamin Wildman-Tobriner, MD • Jenny K. Hoang, MBBS, MHS • David Thayer, PhD, MD •Franklin N. Tessler, MD • William D. Middleton, MD • Maciej A. Mazurowski, PhD
-
Liver fibrosis classification based on transfer learning and FCNet for ultrasound images, IEEE Access (2017) *[read]*
DAN MENG, LIBO ZHANG, GUITAO CAO, WENMING CAO, GUIXU ZHANG, AND BING HU
-
Learning to diagnose cirrhosis with liver capsule guided ultrasound image classification, Sensors (2017) *[read]*
Xiang Liu , Jia Lin Song , Shuo Hong Wang , Jing Wen Zhao and Yan Qiu Chen
-
Breast Tumor Detection in Ultrasound Images Using Deep Learning, Conference Paper in Lecture Notes in Computer Science · August 2017 *[read]*
Zhantao Cao, Lixin Duan, Guowu Yang, Ting Yue, Qin Chen, Huazhu Fu, and Yanwu Xu
-
Automated detection and classification of thyroid nodules in ultrasound images using clinical-knowledge-guided convolutional neural networks, Medical Image Analysis, 58(2019) *[read]*
TianjiaoLiu,QianqianGuo,ChunfengLian,XuhuaRen,ShujunLiang,JingYug,LijuanNiu,WeidongSun,DinggangShen
-
Ensembled deep learning model outperforms human experts in diagnosing biliary atresia from sonographic gallbladder images, nature communications, 2021 *[read]*
Wenying Zhou, Yang Yang, Cheng Yu, Juxian Liu and Xingxing Duan et al.
Radiomics
-
非超声
-
Radiomics Analysis for Evaluation of Pathological Complete Response to Neoadjuvant Chemoradiotherapy in Locally Advanced Rectal Cancer, Clinical Cancer Research (2017) *[read]*
Zhenyu Liu, Xiao-Yan Zhang,Yan-Jie Shi, Lin Wang, Hai-Tao Zhu, Zhenchao Tang, Shuo Wang, Xiao-Ting Li, Jie Tian, and Ying-Shi Sun
-
超声
-
面向淋巴结病变多分类鉴别的弹性和 B 型 双模态超声影像组学, 生物医学工程学杂志,2019年12月第36卷第6期 *[read]*
石颉1, 2,江建伟3,常婉英3,陈曼3,张麒1, 2
-
实时超声造影技术诊断肾脏实性占位病变的价值,南方医科大学学报,2014 *[read]*
李 鑫,梁 萍,于晓玲,于 杰,程志刚,韩志宇,刘方义,穆梦娟
Combination
-
Machine Learning & Radiomics
-
Deep Learning & Radiomics
-
Deep learning Radiomics of shear wave elastography significantly improved diagnostic performance for assessing liver fibrosis in chronic hepatitis B: a prospective multicentre study, GUT (2018) *[read]*
Wang K, et al.
-
基于影像组学和深度迁移学习的超声图像肝纤维化评估方法研究, 深圳大学,硕士学位论文 (2019) *[read]*
赵万明
Survey And Review
-
计算机辅助诊断技术在超声医学中的应用进展, 综述,肿瘤影像学,2019年第28卷第5期*[read]*
毕 珂,王 茵
-
人工智能时代超声医学新发展,综述,第二军医大学学报,2019 年 5 月第 40 卷第 5 期*[read]*
赵佳琦,刁宗平,徐 琪,章建全
-
基于大数据和人工智能的超声医学发展现状及问题研究, 综述,肿瘤影像学,2020年第29卷第4期 *[read]*
王海星,杨志清,郭玲玲,郭燕青,张 靓,齐 昊
-
深度学习在医学超声图像分析中的应用综述,Engineering, 5(2): 261–275 (2019) [read]* [英文原文]*
刘盛锋,王毅,杨鑫,雷柏英,刘立,李享,倪东,汪天富
-
A Survey on Domain Knowledge Powered Deep Learning for Medical Image Analysis,arXiv e-prints, (2020) *[read]*
Xiaozheng Xie, Jianwei Niu, Senior Member, IEEE, Xuefeng Liu, Zhengsu Chen, and ShaojieTang, Member, IEEE
Related Research Platform
Public Data
- ISBI(生物医学成像国际研讨会)每届数据下载地址
- 哈佛beamandrew机器学习和医学影像研究者贡献的数据集
- 心脏病心房图像及标注数据
- 癌症CT影像数据
- 软组织肉瘤CT图像数据
- 肺癌CT图像数据
- 癌症MRI影像数据
- MICCAI胰腺分割数据集
- The National Library of Medicine presents MedPix
- 结肠癌CT数据
- AMRG Cardiac Atlas(心脏MRI图像)
- 大脑MRI数据集
- 肺部图像数据库联盟
- INbreast:数字化乳腺摄影数据库
- 前列腺癌数据集
- DeepLesion:多类别、病灶级别标注临床医疗CT图像开放数据集(230G)
- MURA:基于深度学习检测骨骼疾病(吴恩达团队公布)
- LiTS肝脏/肝肿瘤分割