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E-raamat: Medical Imaging and Computer-Aided Diagnosis: Proceeding of 2020 International Conference on Medical Imaging and Computer-Aided Diagnosis (MICAD 2020)

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This book covers virtually all aspects of image formation in medical imaging, including systems based on ionizing radiation (x-rays, gamma rays) and non-ionizing techniques (ultrasound, optical, thermal, magnetic resonance, and magnetic particle imaging) alike. In addition, it discusses the development and application of computer-aided detection and diagnosis (CAD) systems in medical imaging.

Given its coverage, the book provides both a forum and valuable resource for researchers involved in image formation, experimental methods, image performance, segmentation, pattern recognition, feature extraction, classifier design, machine learning / deep learning, radiomics, CAD workstation design, human–computer interaction, databases, and performance evaluation. 

Computer Modeling and Laser Stereolithography in Cranio-Orbital Reconstructive Surgery
1(6)
Sergey A. Eolchiyan
Mikhail M. Novikov
Svetlana A. Cherebylo
Sparse Representation Label Fusion Method Combining Pixel Grayscale Weight for Brain MR Segmentation
7(10)
Pengcheng Li
Monan Wang
Deep Learning for Mental Illness Detection Using Brain SPECT Imaging
17(10)
Felisa J. Vazquez-Abad
Silvano Bernabel
Daniel Dufresne
Rishi Sood
Thomas Ward
Daniel Amen
Vessel Segmentation and Stenosis Quantification from Coronary X-Ray Angiograms
27(8)
Irina Andra Tache
Dimitrios Glotsos
Improved Brain Tumor Segmentation and Diagnosis Using an SVM-Based Classifier
35(11)
Krishna Ganesh
R. Swarnalatha
3D-Reconstruction and Semantic Segmentation of Cystoscopic Images
46(10)
M. Negassi
U. Parupalli
R. Suarez-Ibarrola
A. Schmitt
S. Hein
A. Miernik
A. Reiterer
A Biomedical Survey on Osteoporosis Classification Techniques
56(21)
Zahra Amiri
Fatemeh Tavakoli
Vala Mehryar Alviri
Morteza Modarresi Asem
Segment Medical Image Using U-Net Combining Recurrent Residuals and Attention
77(10)
Yuan Wang
Zhiyou He
Peizhen Xie
Canqun Yang
Yu Zhang
Fangfang Li
Xiang Chen
Kai Lu
Tao Li
Jiao Zhou
Ke Zuo
A New Importance-Performance Analysis by Size-Insensitive Integrity-Based Fuzzy C-Means
87(8)
Shou-Hsiung Cheng
Gingivitis Identification via GLCM and Artificial Neural Network
95(12)
Yihao Chen
Xianqing Chen
A Novel Classification Method of Medical Image Segmentation Algorithm
107(9)
Yu Kong
Yueqin Dun
Jiandong Meng
Liang Wang
Wanqiang Zhang
Xinchun Li
Pathological Changes Discover Network: Discover the Pathological Changes of Perivascular Dermatitis by Semi-supervised Learning
116(8)
Xiaodong He
Yu Fu
Yingqiu Bao
Jianmin Chang
Yibo Xie
Weiping Li
Jing Zhang
Optical Micro-scanning Reconstruction Technique for a Thermal Microscope Imaging System
124(10)
Mei-Jing Gao
Zhu Liu
Liu-Zhu Wang
Bo-Zhi Zhang
Shi-Yu Li
A Survey for Traditional, Cascaded Regression, and Deep Learning-Based Face Alignment
134(11)
Kun Wang
Guosheng Zhao
Automatic Detection and Counting of Malaria Parasite-Infected Blood Cells
145(13)
Elena Doering
Anna Pukropski
Ulf Krumnack
Axel Schaffland
Classification of Chest Diseases Using Wavelet Transforms and Transfer Learning
158(8)
Ahmed Rasheed
Muhammad Shahzad Younis
Muhammad Bilal
Maha Rasheed
Performance Analysis of Different 2D and 3D CNN Model for Liver Semantic Segmentation: A Review
166(9)
Ashfia Binte Habib
Mahmud Elahi Akhter
Rafeed Sultaan
Zunayeed Bin Zahir
Rishad Arfin
Fahimul Haque
Syed Athar Bin Amir
Md Shahriar Hussain
Rajesh Palit
Application of Image Segmentation and Convolutional Neural Network in Classification Algorithms for Mammary X-ray Molybdenum Target Image
175(13)
Minghuan Zhang
Wenjian Liu
Xuan Zhang
Ying Chen
Yajia Gu
Qin Xiao
Fusion Segmentation of Head Medical Image with Partially Annotated Data
188(10)
Xuzidui
Guantian
Heyonghong
Application of I-Shaped Convolutional Neural Network Based on Attention Mechanism in Liver CT Image Segmentation
198(9)
Chen Li
Wei Chen
Xin Luo
Mingfei Wu
Xiaogang Jia
Yusong Tan
Zhiying Wang
Design of Photovoltaic Power Intelligent Patrol Robot
207(13)
Na Yao
Xiaofang Zhao
Huazhu Liu
Application of Intelligent Calculation Method in the Cage Simulation
220(9)
Xinfeng Zhang
Yunwei Zhang
Ziqian Huang
Ying Yuan
Xiangzhong Wei
An Analysis of Multi-organ Segmentation Performance of CNNs on Abdominal Organs with an Emphasis on Kidney
229
Mahmud Elahi Akhter
Ashfia Binte Habib
Rishad Arfin
Fahimul Haque
Syed Athar Bin Amir
Zunayeed Bin Zahir
Md Shahriar Hussain
Rajesh Palit
Correction to: Automatic Detection and Counting of Malaria Parasite-Infected Blood Cells 1(242)
Elena Doering
Anna Pukropski
Ulf Krumnack
Axel Schaffland
Author Index 243
Dr. Ruidan Su received his M.Sc. in Software Engineering from Northeastern University, China, in 2010, and his Ph.D. degree in Computer Application Technology from Northeastern University, China, in 2014. He is currently an Assistance Professor of Shanghai Advanced Research Institute, Chinese Academy of Sciences. His field of science is digital image processing and artificial intelligence, video system processing, machine learning, computational intelligence, software engineering, data analytics, system optimization, and multi-population genetic algorithm.





Dr. Ruidan Su is an IEEE Senior Member. He has published 22 papers in refereed journals and conference proceedings. He was the Founder & Editor-in-Chief of Journal of Computational Intelligence and Electronic Systems published by American Scientific Publisher from 2012 to 2016. He was an Associate Editor for the Journal of Granular Computing Published by Springer, an Associate Editor for the Journal of Intelligent& Fuzzy Systems published by IOS Press, and a Review Board Member for Applied Intelligence.





Dr. Ruidan Su was the Guest Editor for Multimedia Tools and Applications by Springer for Special Issue on Practical Augmented Reality (AR) Technology and its Applications, a Guest Editor for the Journal of International Journal of Hydrogen Energy, and a Proceeding Editor for the Proceeding of 2018 & 2019 International Conference on Image and Video Processing, and Artificial Intelligence (IVPAI 2018 & 2019, published by SPIE). He was a Conference Chair for 2018 & 2019 International Conference on Image and Video Processing, and Artificial Intelligence, a conference Chair for 2018 3rd International Conference on Computer, Communication and Computational Sciences, and a Conference Program Committee Member for 18th International Conference on Machine Learning and Cybernetics





Dr. Ruidan Su has been a Reviewer for several leading journals, such as Information Sciences, IEEETransactions on Cybernetics, IEEE Access, Applied Intelligence, International Journal of Pattern Recognition and Artificial Intelligence, Knowledge and Information Systems, Multimedia Tools and Application, The Journal of Supercomputing, Concurrency and Computation: Practice and Experience, and Electronic Commerce Research. 









Han Liu is currently a Research Associate in Data Science in the School of Computer Science and Informatics at Cardiff University. He has previously been a Research Associate in Computational Intelligence in the School of Computing at the University of Portsmouth. He received a B.Sc. in Computing from the University of Portsmouth in 2011, an M.Sc. in Software Engineering from the University of Southampton in 2012, and a Ph.D. in Machine Learning from the University of Portsmouth in 2015. His research interests are in artificial intelligence in general and machine learning in particular. His other related areas include sentiment analysis, pattern recognition, intelligent systems, big data, granular computing, and computational intelligence.

He has published two research monographs in Springer and over 60 papers in the areas such as data mining, machine learning, and intelligent systems. One of his papers was identified as a key scientific article contributing to scientific and engineering research excellence by the selection team at Advances in Engineering and the selection rate is less than 0.1%. He also has three papers selected, respectively, as finalists of Lotfi Zadeh Best Paper Award in the 16th, 17th, and 18th International Conference on Machine Learning and Cybernetics (ICMLC 2017, 2018 & 2019).