Litcius/Paper detail

The Budapest Amyloid Predictor and Its Applications

László Keresztes

2021MDPI (MDPI AG)28 citationsDOIOpen Access PDF

Abstract

The amyloid state of proteins is widely studied with relevance to neurology, biochemistry, and biotechnology. In contrast with nearly amorphous aggregation, the amyloid state has a well-defined structure, consisting of parallel and antiparallel β-sheets in a periodically repeated formation. The understanding of the amyloid state is growing with the development of novel molecular imaging tools, like cryogenic electron microscopy. Sequence-based amyloid predictors were developed, mainly using artificial neural networks (ANNs) as the underlying computational technique. From a good neural-network-based predictor, it is a very difficult task to identify the attributes of the input amino acid sequence, which imply the decision of the network. Here, we present a linear Support Vector Machine (SVM)-based predictor for hexapeptides with correctness higher than 84%, i.e., it is at least as good as the best published ANN-based tools. Unlike artificial neural networks, the decisions of the linear SVMs are much easier to analyze and, from a good predictor, we can infer rich biochemical knowledge. In the Budapest Amyloid Predictor webserver the user needs to input a hexapeptide, and the server outputs a prediction for the input plus the 6 × 19 = 114 distance-1 neighbors of the input hexapeptide.

Topics & Concepts

Artificial neural networkAntiparallel (mathematics)Artificial intelligenceAmyloid (mycology)Support vector machineComputer scienceSequence (biology)Machine learningPattern recognition (psychology)Computational biologyChemistryBiologyBiochemistryQuantum mechanicsMagnetic fieldInorganic chemistryPhysicsMachine Learning in BioinformaticsProtein Structure and DynamicsAdvanced Proteomics Techniques and Applications