A classification system based on a new wrapper feature selection algorithm for the diagnosis of primary and secondary polycythemia

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A classification system based on a new wrapper feature selection algorithm for the diagnosis of primary and secondary polycythemia (EN)

Ματσόπουλος, Γεώργιος Κ. (EL)
Κορφιάτης, Βασίλειος Χρ. (EL)
Ασβεστάς, Παντελής Α. (EL)
Ντελιμπάσης, Κωνσταντίνος Κ. (EL)

journalArticle

2015-05-17T21:44:23Z
2015-05-18

2013-12


Computers in Biology and Medicine (EN)
Primary and Secondary Polycythemia are diseases of the bone marrow that affect the blood's composition and prohibit patients from becoming blood donors. Since these diseases may become fatal, their early diagnosis is important. In this paper, a classification system for the diagnosis of Primary and Secondary Polycythemia is proposed. The proposed system classifies input data into three classes; Healthy, Primary Polycythemic (PP) and Secondary Polycythemic (SP) and is implemented using two separate binary classification levels. The first level performs the Healthy/non-Healthy classification and the second level the PP/SP classification. To this end, a novel wrapper feature selection algorithm, called the LM–FM algorithm, is presented in order to maximize the classifier's performance. The algorithm is comprised of two stages that are applied sequentially: the Local Maximization (LM) stage and the Floating Maximization (FM) stage. The LM stage finds the best possible subset of a fixed predefined size, which is then used as an input for the next stage. The FM stage uses a floating size technique to search for an even better solution by varying the initially provided subset size. Then, the Support Vector Machine (SVM) classifier is used for the discrimination of the data at each classification level. The proposed classification system is compared with various well-established feature selection techniques such as the Sequential Floating Forward Selection (SFFS) and the Maximum Output Information (MOI) wrapper schemes, and with standalone classification techniques such as the Multilayer Perceptron (MLP) and SVM classifier. The proposed LM–FM feature selection algorithm combined with the SVM classifier increases the overall performance of the classification system, scoring up to 98.9% overall accuracy at the first classification level and up to 96.6% at the second classification level. Moreover, it provides excellent robustness regardless of the size of the input feature subset used. (EN)


**N/A**-Ιατρική
Maximum output information
Βιοϊατρική τεχνολογία
LM–FM wrapper
http://id.loc.gov/authorities/subjects/sh85104610
Classification systems
Ιατρική
Η μέγιστη πληροφορία εξόδου
Μηχανή μάθησης
http://id.loc.gov/authorities/subjects/sh85014237
**N/A**-Βιοϊατρική τεχνολογία
LM-FM περιτύλιγμα
Medicine
Πολυκυτταραιμία
Multiclass SVM
Polycythemia
http://id.loc.gov/authorities/subjects/sh85079324
Machine learning
http://skos.um.es/unescothes/C00619
http://id.loc.gov/authorities/subjects/sh00006614
Συστήματα ταξινόμησης
Biomedical engineering

Τ.Ε.Ι. Αθήνας. Σχολή Τεχνολογικών Εφαρμογών. Τμήμα Μηχανικών Βιοϊατρικής Τεχνολογίας Τ.Ε. (EL)

http://www.sciencedirect.com/science/article/pii/S0010482513002679#

Αναφορά Δημιουργού-Μη Εμπορική Χρήση-Όχι Παράγωγα Έργα 3.0 Ηνωμένες Πολιτείες
http://creativecommons.org/licenses/by-nc-nd/3.0/us/
campus




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