» Articles » PMID: 11465033

Comparing the Success of Different Prediction Software in Sequence Analysis: a Review

Overview
Journal Brief Bioinform
Specialty Biology
Date 2001 Jul 24
PMID 11465033
Citations 20
Authors
Affiliations
Soon will be listed here.
Abstract

The abundance of computer software for different types of prediction in DNA and protein sequence analyses raises the problem of adequate ranking of prediction program quality. A single measure of success of predictor software, which adequately ranks the predictors, does not exist. A typical example of such an incomplete measure is the so-called correlation coefficient. This paper provides an overview and short analysis of several different measures of prediction quality. Frequently, some of these measures give results contradictory to each other even when they relate to the same prediction scores. This may lead to confusion. In order to overcome some of the problems, a few new measures are proposed including some variants of a 'generalised distance from the ideal predictor score'; these are based on topological properties, rather than on statistics. In order to provide a sort of a balanced ranking, the averaged score measure (ASM) is introduced. The ASM provides a possibility for the selection of the predictor that probably has the best overall performance. The method presented in the paper applies to the ranking problem of any prediction software whose results can be properly represented in a true positive-false positive framework, thus providing a natural set-up for linear biological sequence analysis.

Citing Articles

WY195, a New Inducible Promoter From the Rubber Powdery Mildew Pathogen, Can Be Used as an Excellent Tool for Genetic Engineering.

Wang Y, Wang C, Rajaofera M, Zhu L, Xu X, Liu W Front Microbiol. 2021; 11:610252.

PMID: 33424812 PMC: 7793764. DOI: 10.3389/fmicb.2020.610252.


WY7 is a newly identified promoter from the rubber powdery mildew pathogen that regulates exogenous gene expression in both monocots and dicots.

Wang Y, Wang C, Rajaofera M, Zhu L, Liu W, Zheng F PLoS One. 2020; 15(6):e0233911.

PMID: 32479550 PMC: 7263610. DOI: 10.1371/journal.pone.0233911.


Comparison Study of Computational Prediction Tools for Drug-Target Binding Affinities.

Thafar M, Raies A, Albaradei S, Essack M, Bajic V Front Chem. 2019; 7:782.

PMID: 31824921 PMC: 6879652. DOI: 10.3389/fchem.2019.00782.


HMCan-diff: a method to detect changes in histone modifications in cells with different genetic characteristics.

Ashoor H, Louis-Brennetot C, Janoueix-Lerosey I, Bajic V, Boeva V Nucleic Acids Res. 2017; 45(8):e58.

PMID: 28053124 PMC: 5416852. DOI: 10.1093/nar/gkw1319.


PEDLA: predicting enhancers with a deep learning-based algorithmic framework.

Liu F, Li H, Ren C, Bo X, Shu W Sci Rep. 2016; 6:28517.

PMID: 27329130 PMC: 4916453. DOI: 10.1038/srep28517.