MS²PIP is a data-driven tool that accurately predicts peak intensities for a given peptide's fragmentation mass spectrum. Since the release of the MS²PIP web server in 2015, we have brought significant updates to both the tool and the web server. In addition to the original models for CID and HCD fragmentation, we have added specialized models for the TripleTOF 5600+ mass spectrometer, for TMT-labeled peptides, for iTRAQ-labeled peptides, and for iTRAQ-labeled phosphopeptides. Because the fragmentation pattern is heavily altered in each of these cases, these additional models greatly improve the prediction accuracy for their corresponding data types. We have also substantially reduced the computational resources required to run MS²PIP, and have completely rebuilt the web server, which now allows predictions of up to 100 000 peptide sequences in a single request. The MS²PIP web server is freely available at https://iomics.ugent.be/ms2pip/.
Rising population
density and global mobility are among the reasons
why pathogens such as SARS-CoV-2, the virus that causes COVID-19,
spread so rapidly across the globe. The policy response to such pandemics
will always have to include accurate monitoring of the spread, as
this provides one of the few alternatives to total lockdown. However,
COVID-19 diagnosis is currently performed almost exclusively by reverse
transcription polymerase chain reaction (RT-PCR). Although this is
efficient, automatable, and acceptably cheap, reliance on one type
of technology comes with serious caveats, as illustrated by recurring
reagent and test shortages. We therefore developed an alternative
diagnostic test that detects proteolytically digested SARS-CoV-2 proteins
using mass spectrometry (MS). We established the Cov-MS consortium,
consisting of 15 academic laboratories and several industrial partners
to increase applicability, accessibility, sensitivity, and robustness
of this kind of SARS-CoV-2 detection. This, in turn, gave rise to
the Cov-MS Digital Incubator that allows other laboratories to join
the effort, navigate, and share their optimizations and translate
the assay into their clinic. As this test relies on viral proteins
instead of RNA, it provides an orthogonal and complementary approach
to RT-PCR using other reagents that are relatively inexpensive and
widely available, as well as orthogonally skilled personnel and different
instruments. Data are available via ProteomeXchange with identifier
PXD022550.
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