2006
DOI: 10.1109/tnn.2006.877532
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Accurate and Fast Off and Online Fuzzy ARTMAP-Based Image Classification With Application to Genetic Abnormality Diagnosis

Abstract: Abstract-We propose and investigate the fuzzy ARTMAP neural network in off and online classification of fluorescence in situ hybridization image signals enabling clinical diagnosis of numerical genetic abnormalities. We evaluate the classification task (detecting a several abnormalities separately or simultaneously), classifier paradigm (monolithic or hierarchical), ordering strategy for the training patterns (averaging or voting), training mode (for one epoch, with validation or until completion) and model se… Show more

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Cited by 39 publications
(32 citation statements)
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References 26 publications
(53 reference statements)
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“…Preventing the model from defining a bias and choosing a statistical method that is robust and can solve complex relationships are also crucial. An Artificial Neural Network (ANN) is a popular statistical method which can explore the relationships between variables with high accuracy [1][2][3][4]. Essentially, the structure of an ANN is computer-based and consists of several simple processing elements operating in parallel [3,5,6].…”
Section: Introductionmentioning
confidence: 99%
“…Preventing the model from defining a bias and choosing a statistical method that is robust and can solve complex relationships are also crucial. An Artificial Neural Network (ANN) is a popular statistical method which can explore the relationships between variables with high accuracy [1][2][3][4]. Essentially, the structure of an ANN is computer-based and consists of several simple processing elements operating in parallel [3,5,6].…”
Section: Introductionmentioning
confidence: 99%
“…From elementary geometry, we know that every point is a linear combination of vectors in the set , so which verify (13) Thus, the set of vectors is linearly dependent, and they compose a singular matrix (14) where is the th component of . Equation (14) is the definition of in (3) (Section III-A1).…”
Section: Appendix I Equation Of the Hyperplane Defined By Vectorsmentioning
confidence: 99%
“…These networks feature online, incremental learning, with self-organized (ART1, ART2, ART3, fuzzy ART) and supervised learning (fuzzy ARTMAP (FAM) [2], Gaussian ARTMAP (GAM) [3], distributed ARTMAP (DAM) [4], ellipsoid ARTMAP (EAM) [5], FasArt [6], and FAM with relevance (FAMR) [7], among others). These models have been widely used in many application fields, including robotics [8], data mining [9], information fusion [10], data clustering [11], multichannel pattern recognition [12], image classification [13], etc. Default ARTMAP [14] compiles the basic structure of an ARTMAP network.…”
Section: Introductionmentioning
confidence: 99%
“…FAM and its variants have exemplified themselves as accurate and fast learners in performing various classification tasks, such as automatic target recognition based on radar range profiles [8], speaker-independent vowel recognition [9], online handwritten recognition [10], QRS-wave recognition [11], medical diagnosis of breast cancer and heart disease [12], three-dimensional object understanding and prediction from a series of two-dimensional views [13], classification of noisy signals [14], discrimination of alcoholics from nonalcoholics [15] and recently genetic abnormality diagnosis [16], as well as many other classification tasks such as [17,18,19,20,21,22,23].…”
Section: Introductionmentioning
confidence: 99%
“…It is the self-organization nature of the algorithm that while enabling continuous learning of novel patterns also leads to the overfitting of noisy (overlapped) data that are mistakenly considered novel. This sensitivity can lead to uncontrolled growth in the number of categories, also referred to as category proliferation, leading to high computational and memory complexities and possible degradation in classification accuracy [7,9,16,24,25,26,27,28,29]. Improving FAM classification accuracy and reducing model category proliferation are the most studied topics in the FAM literature.…”
Section: Introductionmentioning
confidence: 99%