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Predicting the Lineage Choice of Hematopoietic Stem Cells - A Novel Approach Using Deep Neural Networks

English · Paperback / Softback

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Description

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Manuel Kroiss examines the differentiation of hematopoietic stem cells using machine learning methods. This work is based on experiments focusing on the lineage choice of CMPs, the progenitors of HSCs, which either become MEP or GMP cells. The author presents a novel approach to distinguish MEP from GMP cells using machine learning on morphology features extracted from bright field images. He tests the performance of different models and focuses on Recurrent Neural Networks with the latest advances from the field of deep learning. Two different improvements to recurrent networks were tested: Long Short Term Memory (LSTM) cells that are able to remember information over long periods of time, and dropout regularization to prevent overfitting. With his method, Manuel Kroiss considerably outperforms standard machine learning methods without time information like Random Forests and Support Vector Machines.

List of contents

Machine Learning - Deep Learning.- Training Neural Networks.- Recurrent Neural Networks.- Stem Cell Classification Using Microscopy Images.

About the author

After finishing his MSc in Bioinformatics, Manuel Kroiss moved to London to work for a computer science company. In his work, the author is focusing on algorithmic problem solving while still remaining interested in applied machine learning.

Summary

Manuel Kroiss examines the differentiation of hematopoietic stem cells using machine learning methods. This work is based on experiments focusing on the lineage choice of CMPs, the progenitors of HSCs, which either become MEP or GMP cells. The author presents a novel approach to distinguish MEP from GMP cells using machine learning on morphology features extracted from bright field images. He tests the performance of different models and focuses on Recurrent Neural Networks with the latest advances from the field of deep learning. Two different improvements to recurrent networks were tested: Long Short Term Memory (LSTM) cells that are able to remember information over long periods of time, and dropout regularization to prevent overfitting. With his method, Manuel Kroiss considerably outperforms standard machine learning methods without time information like Random Forests and Support Vector Machines.

Product details

Authors Manuel Kroiss
Publisher Springer, Berlin
 
Languages English
Product format Paperback / Softback
Released 30.06.2016
 
EAN 9783658128784
ISBN 978-3-658-12878-4
No. of pages 68
Dimensions 150 mm x 6 mm x 210 mm
Weight 122 g
Illustrations XV, 68 p.
Series Springer Spektrum
BestMasters
BestMasters
Subjects Natural sciences, medicine, IT, technology > Chemistry > Organic chemistry

C, ORGANIC CHEMISTRY, Industrielle Chemie und Chemietechnologie, Katalyse, Catalysis, Chemistry and Materials Science, Chemical Engineering, Industrial Chemistry, Industrial chemistry & chemical engineering, Industrial Chemistry/Chemical Engineering

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