ToxinPred 3.0: An improved method for predicting the toxicity of peptides.

Rathore, Anand Singh et al.·Computers in biology and medicine·2024·
RPEP-091242024RETHINKTHC RESEARCH DATABASErethinkthc.com/research

Quick Facts

Study Type
Not classified
Evidence
Not graded
Sample
Not reported

What This Study Found

Key Numbers

How They Did This

Why This Research Matters

What This Study Doesn't Tell Us

Trust & Context

Original Title:
ToxinPred 3.0: An improved method for predicting the toxicity of peptides.
Published In:
Computers in biology and medicine, 179, 108926 (2024)
Database ID:
RPEP-09124

Evidence Hierarchy

Meta-Analysis / Systematic Review
Randomized Controlled Trial
Cohort / Case-Control
Cross-Sectional / ObservationalSnapshot without intervening
This study
Case Report / Animal Study
What do these levels mean? →

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Cite This Study

RPEP-09124·https://rethinkpeptides.com/research/RPEP-09124

APA

Rathore, Anand Singh; Choudhury, Shubham; Arora, Akanksha; Tijare, Purva; Raghava, Gajendra P S. (2024). ToxinPred 3.0: An improved method for predicting the toxicity of peptides.. Computers in biology and medicine, 179, 108926. https://doi.org/10.1016/j.compbiomed.2024.108926

MLA

Rathore, Anand Singh, et al. "ToxinPred 3.0: An improved method for predicting the toxicity of peptides.." Computers in biology and medicine, 2024. https://doi.org/10.1016/j.compbiomed.2024.108926

RethinkPeptides

RethinkPeptides Research Database. "ToxinPred 3.0: An improved method for predicting the toxicit..." RPEP-09124. Retrieved from https://rethinkpeptides.com/research/rathore-2024-toxinpred-30-an-improved

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Study data sourced from PubMed, a service of the U.S. National Library of Medicine, National Institutes of Health.

This study breakdown was produced by the RethinkPeptides research team. We analyze and report published research findings without making health recommendations. All interpretations are based solely on the published abstract and study data.