Medical Image Segmentation Using Artificial Neural Networks

Segmentation of tissues and structures from medical images is the first step in many image analysis applications developed for medical diagnosis. Development of treatment plans and evaluation of disease progression are other applications. These applications stem from the fact that diseases affect specific tissues or structures, lead to loss, atrophy (volume loss), and abnormalities. Consequently, an accurate, reliable, and automatic segmentation of these tissues and structures can improve diagnosis and treatment of diseases. Manual segmentation, although prone to rater drift and bias, is usually accurate but is impractical for large datasets because it is tedious and time consuming. Automatic segmentation methods can be useful for clinical applications if they have: 1) ability to segment like an expert; 2) excellent performance for diverse datasets; and 3) reasonable processing speed.

Artificial Neural Networks (ANNs) have been developed for a wide range of applications such as function approximation, feature extraction, optimization, and classification. In particular, they have been developed for image enhancement, segmentation, registration, feature extraction, and object recognition. Among these, image segmentation is more important as it is a critical step for high-level processing such as object recognition. Multi-Layer Perceptron (MLP), Radial Basis Function (RBF), Hopfield, Cellular, and Pulse-Coupled neural networks have been used for image segmentation. These networks can be categorized into feed-forward (associative) and feedback (auto-associative) networks. MLP, Self-Organized Map (SOM), and RBF neural networks belong to the feed-forward networks while Hopfield, Cellular, and Pulse-Coupled neural networks belong to the feedback networks.

This chapter is organized as follows. Section 2 explains methods that benefit from feedback networks such as Hopfield, Cellular, and Pulse-Coupled neural networks for image segmentation. In Section 3, we review the methods that use feedforward networks such as MLP and RBF neural networks. Then, we present our recent method. In this method, deep brain structures are segmented using Geometric Moment Invariants (GMIs) and MLP neural networks.

Related posts:

Coding Theory - Algorithms, Architectures and Application
Python Machine Learning Third Edition - Sebastian Raschka & Vahid Mirjalili
Deep Learning from Scratch - Building with Python form First Principles - Seth Weidman
Deep Learning for Natural Language Processing - Jason Brownlee
Introduction to Deep Learning Business Application for Developers - Armando Vieira & Bernardete Ribe...
Python Machine Learning Second Edition - Sebastian Raschka & Vahid Mirjalili
Building Machine Learning Systems with Python - Willi Richert & Luis Pedro Coelho
Foundations of Machine Learning second edition - Mehryar Mohri & Afshin Rostamizadeh & Ameet Talwalk...
Deep Learning with Python - Francois Chollet
Understanding Machine Learning from theory to algorithms - Shai Shalev-Shwartz & Shai Ben-David
Generative Deep Learning - Teaching Machines to Paint, Write, Compose and Play - David Foster
Data Science and Big Data Analytics - EMC Education Services
Machine Learning with spark and python - Michael Bowles
Pro Deep Learning with TensorFlow - Santunu Pattanayak
Introduction to the Math of Neural Networks - Jeff Heaton
Fundamentals of Deep Learning - Nikhil Bubuma
Machine Learning Applications Using Python - Cases studies form Healthcare, Retail, and Finance - Pu...
Applied Text Analysis with Python - Benjamin Benfort & Rebecca Bibro & Tony Ojeda
Deep Learning with Hadoop - Dipayan Dev
Amazon Machine Learning Developer Guild Version Latest
Hands-On Machine Learning with Scikit-Learn and TensorFlow - Aurelien Geron
Intelligent Projects Using Python - Santanu Pattanayak
Hands-on Machine Learning with Scikit-Learn, Keras & TensorFlow - Aurelien Geron
Deep Learning dummies first edition - John Paul Mueller & Luca Massaron
Python Data Structures and Algorithms - Benjamin Baka
Machine Learning - An Algorithmic Perspective second edition - Stephen Marsland
Practical computer vision applications using Deep Learning with CNNs - Ahmed Fawzy Gad
Learn Keras for Deep Neural Networks - Jojo Moolayil
Python for Programmers with introductory AI case studies - Paul Deitel & Harvey Deitel
Machine Learning - The art and science of alhorithms that make sense of data - Peter Flach
Machine Learning with Python for everyone - Mark E.Fenner
Learning scikit-learn Machine Learning in Python - Raul Garreta & Guillermo Moncecchi