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2019 | OriginalPaper | Buchkapitel

Using Machine Learning Algorithm for Diagnosis of Stomach Disorders

verfasst von : Yedilkhan Amirgaliyev, Shahriar Shamiluulu, Timur Merembayev, Didar Yedilkhan

Erschienen in: Mathematical Optimization Theory and Operations Research

Verlag: Springer International Publishing

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Abstract

Medicine is one of the rich sources of data, generating and storing massive data, begin from description of clinical symptoms and end by different types of biochemical data and images from devices. Manual search and detecting biomedical patterns is complicated task from massive data. Data mining can improve the process of detecting patterns. Stomach disorders are the most common disorders that affect over 60% of the human population. In this work, the classification performance of four non-linear supervised learning algorithms i.e. Logit, K-Nearest Neighbour, XGBoost and LightGBM for five types of stomach disorders are compared and discussed. The objectives of this research are to find trends of using or improvements of machine learning algorithms for detecting symptoms of stomach disorders, to research problems of using machine learning algorithms for detecting stomach disorders. Bayesian optimization is considered to find optimal hyperparameters in the algorithms, which is faster than the grid search method. Results of the research show algorithms that base on gradient boosting technique (XGBoost and LightGBM) gets better accuracy more 95% on the test dataset. For diagnostic and confirmation of diseases need to improve accuracy, in the article, we propose to use optimization methods for accuracy improvement with using machine learning algorithms.

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Metadaten
Titel
Using Machine Learning Algorithm for Diagnosis of Stomach Disorders
verfasst von
Yedilkhan Amirgaliyev
Shahriar Shamiluulu
Timur Merembayev
Didar Yedilkhan
Copyright-Jahr
2019
DOI
https://doi.org/10.1007/978-3-030-33394-2_27