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Explainabilty Comparison between Random Forests and Neural Networks—Case Study of Amino Acid Volume Prediction

Authors :
Roberta De Fazio
Rosy Di Giovannantonio
Emanuele Bellini
Stefano Marrone
De Fazio, R.
Di Giovannantonio, R.
Bellini, E.
Marrone, S.
Source :
Information; Volume 14; Issue 1; Pages: 21
Publication Year :
2022
Publisher :
MDPI AG, 2022.

Abstract

As explainability seems to be the driver for a wiser adoption of Artificial Intelligence in healthcare and in critical applications, in general, a comprehensive study of this field is far from being completed. On one hand, a final definition and theoretical measurements of explainability have not been assessed, yet, on the other hand, some tools and frameworks for the practical evaluation of this feature are now present. This paper aims to present a concrete experience in using some of these explainability-related techniques in the problem of predicting the size of amino acids in real-world protein structures. In particular, the feature importance calculation embedded in Random Forest (RF) training is compared with the results of the Eli-5 tool applied to the Neural Network (NN) model. Both the predictors are trained on the same dataset, which is extracted from Protein Data Bank (PDB), considering 446 myoglobins structures and process it with several tools to implement a geometrical model and perform analyses on it. The comparison between the two models draws different conclusions about the residues’ geometry and their biological properties.

Details

ISSN :
20782489
Volume :
14
Database :
OpenAIRE
Journal :
Information
Accession number :
edsair.doi.dedup.....e53d0c8d50a4492dbe38f149fbfdf070
Full Text :
https://doi.org/10.3390/info14010021