Bioinformatic challenges in targeted proteomics.
Selected reaction monitoring mass spectrometry is an emerging targeted proteomics technology that allows for the investigation of complex protein samples with high sensitivity and efficiency. It requires extensive knowledge about the sample for the many parameters needed to carry out the experiment to be set appropriately. Most studies today rely on parameter estimation from prior studies, public databases, or from measuring synthetic peptides. This is efficient and sound, but in absence of prior data, de novo parameter estimation is necessary. Computational methods can be used to create an automated framework to address this problem. However, the number of available applications is still small. This review aims at giving an orientation on the various bioinformatical challenges. To this end, we state the problems in classical machine learning and data mining terms, give examples of implemented solutions and provide some room for alternatives. This will hopefully lead to an increased momentum for the development of algorithms and serve the needs of the community for computational methods. We note that the combination of such methods in an assisted workflow will ease both the usage of targeted proteomics in experimental studies as well as the further development of computational approaches.
Duke Scholars
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Related Subject Headings
- Proteomics
- Proteins
- Mass Spectrometry
- Databases, Protein
- Data Mining
- Computational Biology
- Biochemistry & Molecular Biology
- Artificial Intelligence
- Algorithms
- 34 Chemical sciences
Citation
Published In
DOI
EISSN
ISSN
Publication Date
Volume
Issue
Start / End Page
Related Subject Headings
- Proteomics
- Proteins
- Mass Spectrometry
- Databases, Protein
- Data Mining
- Computational Biology
- Biochemistry & Molecular Biology
- Artificial Intelligence
- Algorithms
- 34 Chemical sciences