Abstract: | |
Neural networks are one option to implement decision support systems for health care applications. In this paper, we identify optimal settings of neural networks for medical diagnoses: The study involves the application of supervised machine learning using an artificial neural network to distinguish between gout and leukaemia patients. With the objective to improve the base accuracy (calculated from the initial set-up of the neural network model), several enhancements are analysed, such as the use of hyperbolic tangent activation function instead of the sigmoid function, the use of two hidden layers instead of one, and transforming the measurements with linear regression to obtain a smoothened data set. Another setting we study is the impact on the accuracy when using a data set of reduced size but with higher data quality. We also discuss the tradeoff between accuracy and runtime efficiency.
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License of this version: | CC BY-NC 4.0 Unported - https://creativecommons.org/licenses/by-nc/4.0/ |
Publication type: | Article |
Publishing status: | publishedVersion |
Publication date: | 2019 |
Keywords english: | artifical neural network, disease classification, MIMIC-III, supervised machine learning, Decision support systems, Diagnosis, Hyperbolic functions, Machine learning, Metadata, Supervised learning, Activation functions, Artifical neural networks, Disease classification, Health care application, MIMIC-III, Neural network model, Run-time efficiency, Supervised machine learning, Multilayer neural networks |
DDC: | 620 | Ingenieurwissenschaften und Maschinenbau |
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