Přehled o publikaci
2024
Analysis of mutations in precision oncology using the automated, accurate, and user-friendly web tool PredictONCO
KHAN, Rayyan Tariq; Petra POKORNÁ; Jan DVORSKÝ; Simeon BORKO; Adam DOBIÁŠ et al.Basic information
Original name
Analysis of mutations in precision oncology using the automated, accurate, and user-friendly web tool PredictONCO
Authors
KHAN, Rayyan Tariq; Petra POKORNÁ; Jan DVORSKÝ; Simeon BORKO; Adam DOBIÁŠ; Joan PLANAS IGLESIAS; Stanislav MAZURENKO; Ihor AREFIEV; José Gaspar RANGEL PAMPLONA PIZARRO PINTO; Veronika SZOTKOWSKÁ; Jaroslav ŠTĚRBA; Jiří DAMBORSKÝ; Ondřej SLABÝ and David BEDNÁŘ
Edition
Computational and Structural Biotechnology Journal, Amsterdam, Elsevier, 2024, 2001-0370
Other information
Language
English
Type of outcome
Article in a journal
Country of publisher
Netherlands
Confidentiality degree
is not subject to a state or trade secret
References:
Marked to be transferred to RIV
Yes
RIV identification code
RIV/00216224:14310/24:00138217
Organization
Přírodovědecká fakulta – Repository – Repository
UT WoS
EID Scopus
Keywords (in Czech)
Precision oncology; Webserver; Mutation; Prediction; Treatment; Next-generation sequencing; Virtual screening; Oncogenicity; Automation; Machine learning
Keywords in English
Precision oncology; Webserver; Mutation; Prediction; Treatment; Next-generation sequencing; Virtual screening; Oncogenicity; Automation; Machine learning
Links
LX22NPO5102, research and development project. MUNI/A/1625/2023, interní kód Repo. NU20-03-00240, research and development project. TN02000109, research and development project. 857560, interní kód Repo. CZECRIN IV, large research infrastructures. RECETOX RI II, large research infrastructures.
Changed: 1/8/2025 00:50, RNDr. Daniel Jakubík
Abstract
In the original language
Next-generation sequencing technology has created many new opportunities for clinical diagnostics, but it faces the challenge of functional annotation of identified mutations. Various algorithms have been developed to predict the impact of missense variants that influence oncogenic drivers. However, computational pipelines that handle biological data must integrate multiple software tools, which can add complexity and hinder nonspecialist users from accessing the pipeline. Here, we have developed an online user-friendly web server tool PredictONCO that is fully automated and has a low barrier to access. The tool models the structure of the mutant protein in the first step. Next, it calculates the protein stability change, pocket level information, evolutionary conservation, and changes in ionisation of catalytic amino acid residues, and uses them as the features in the machine-learning predictor. The XGBoost-based predictor was validated on an independent subset of held-out data, demonstrating areas under the receiver operating characteristic curve (ROC) of 0.97 and 0.94, and the average precision from the precision-recall curve of 0.99 and 0.94 for structure-based and sequence-based predictions, respectively. Finally, PredictONCO calculates the docking results of small molecules approved by regulatory authorities. We demonstrate the applicability of the tool by presenting its usage for variants in two cancer-associated proteins, cellular tumour antigen p53 and fibroblast growth factor receptor FGFR1. Our free web tool will assist with the interpretation of data from next-generation sequencing and navigate treatment strategies in clinical oncology: https://loschmidt.chemi.muni.cz/predictonco/.