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Gene Family Abundance Visualization based on Feature Selection Combined Deep Learning to Improve Disease Diagnosis
Abstract
Advancements in machine learning in general and in deep learning in particular have achieved great success in numerous fields. For personalized medicine approaches, frameworks derived from learning algorithms play an important role in supporting scientists to investigate and explore novel data sources such as metagenomic data to develop and examine methodologies to improve human healthcare. Some challenges when processing this data type include its very high dimensionality and the complexity of diseases. Metagenomic data that include gene families often have millions of features. This leads to a further increase of complexity in processing and requires a huge amount of time for computation. In this study, we propose a method combining feature selection using perceptron weight-based filters and synthetic image generation to leverage deep-learning advancements in order to predict various diseases based on gene family abundance data. An experiment was conducted using gene family datasets of five diseases, i.e. liver cirrhosis, obesity, inflammatory bowel diseases, type 2 diabetes, and colorectal cancer. The proposed method provides not only visualization for gene family abundance data but also achieved a promising performance level.
Ketersediaan
JETS14-009 | JETS V53N1 Januari 2021 | Perpustakaan FT UPI YAI | Tersedia |
Informasi Detil
Judul Seri |
Journal of Engineering and Technological Sciences
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No. Panggil |
JETS V53N1 Januari 2021
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Penerbit | ITB Journal Publisher : Bandung., 2021 |
Deskripsi Fisik |
hlm : 134-150
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Bahasa |
English
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ISBN/ISSN |
2337-5779
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Klasifikasi |
JETS
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Tipe Isi |
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Tipe Media |
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Tipe Pembawa |
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Edisi |
Volume 53 Nomor 1 Januari 2021
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Subyek | |
Info Detil Spesifik |
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Pernyataan Tanggungjawab |
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Versi lain/terkait
Tidak tersedia versi lain