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2016 | OriginalPaper | Buchkapitel

Liver Fibrosis Diagnosis Support System Using Machine Learning Methods

verfasst von : Tomasz Orczyk, Piotr Porwik

Erschienen in: Advanced Computing and Systems for Security

Verlag: Springer India

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Abstract

Liver fibrosis is a common disease of the European population (but not only them). It may have many backgrounds and may develop with a different rapidity—it may stay hidden for many years or rapidly develop into terminal stage called cirrhosis, where liver can no longer fulfill its function. Unfortunately, current methods of diagnosis are either connected with a potential risk for a patient and require a hospitalization or are expensive and not very accurate. This paper presents a comparative study of various feature selection algorithms combined with selected machine learning algorithms which may be used to build an advanced liver fibrosis diagnosis support system based on a nonexpensive and safe routine blood tests. Experiments carried out on a dataset collected by authors, proved usability and satisfactory accuracy of the presented algorithms.

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Metadaten
Titel
Liver Fibrosis Diagnosis Support System Using Machine Learning Methods
verfasst von
Tomasz Orczyk
Piotr Porwik
Copyright-Jahr
2016
Verlag
Springer India
DOI
https://doi.org/10.1007/978-81-322-2650-5_8

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