As current shotgun proteomics experiments can produce gigabytes of mass spectrometry data per hour, processing these massive data volumes has become progressively more challenging. Spectral clustering is an effective approach to speed up downstream data processing by merging highly similar spectra to minimize data redundancy. However, because state-of-the-art spectral clustering tools fail to achieve optimal runtimes, this simply moves the processing bottleneck. In this work, we present a fast spectral clustering tool, HyperSpec, based on hyperdimensional computing (HDC). HDC shows promising clustering capability while only requiring lightweight binary operations with high parallelism that can be optimized using low-level hardware architect...
Summary: SPECLUST is a web tool for hierarchical clustering of peptide mass spectra obtained from pr...
Spectral clustering has attracted much research interest in recent years since it can yield impressi...
In this article, current and future applications of spectral clustering are discussed in the context...
Large-scale proteomics projects often generate massive and highly redundant tandem mass spectra. Spe...
Rationale: Advanced algorithmic solutions are necessary to process the ever increasing amounts of ma...
Modern mass spectrometers can produce mass spectra data at a very high rate. Usually, this data has ...
Large-scale proteomics projects often generate massive and highly redundant tandem mass spectra(MS/M...
Spectrum clustering results for falcon, MaRaCluster, MS-Cluster, msCRUSH, and spectra-cluster on the...
In many applications, we need to cluster large-scale data objects. However, some recently proposed c...
Spectral clustering represents a successful approach to data clustering. Despite its high performanc...
Abstract. Spectral clustering algorithm has been shown to be more effective in finding clusters than...
High-throughput proteomics experiments typically generate large amounts of peptide fragmentation mas...
Mass spectrometry-based proteomics is a maturing discipline of biologic research that is experiencin...
MOTIVATION: Driven by technological advances, the throughput and cost of mass spectrometry (MS) prot...
Modern mass spectrometers are now capable of producing hundreds of thousands of tandem (MS/MS) spect...
Summary: SPECLUST is a web tool for hierarchical clustering of peptide mass spectra obtained from pr...
Spectral clustering has attracted much research interest in recent years since it can yield impressi...
In this article, current and future applications of spectral clustering are discussed in the context...
Large-scale proteomics projects often generate massive and highly redundant tandem mass spectra. Spe...
Rationale: Advanced algorithmic solutions are necessary to process the ever increasing amounts of ma...
Modern mass spectrometers can produce mass spectra data at a very high rate. Usually, this data has ...
Large-scale proteomics projects often generate massive and highly redundant tandem mass spectra(MS/M...
Spectrum clustering results for falcon, MaRaCluster, MS-Cluster, msCRUSH, and spectra-cluster on the...
In many applications, we need to cluster large-scale data objects. However, some recently proposed c...
Spectral clustering represents a successful approach to data clustering. Despite its high performanc...
Abstract. Spectral clustering algorithm has been shown to be more effective in finding clusters than...
High-throughput proteomics experiments typically generate large amounts of peptide fragmentation mas...
Mass spectrometry-based proteomics is a maturing discipline of biologic research that is experiencin...
MOTIVATION: Driven by technological advances, the throughput and cost of mass spectrometry (MS) prot...
Modern mass spectrometers are now capable of producing hundreds of thousands of tandem (MS/MS) spect...
Summary: SPECLUST is a web tool for hierarchical clustering of peptide mass spectra obtained from pr...
Spectral clustering has attracted much research interest in recent years since it can yield impressi...
In this article, current and future applications of spectral clustering are discussed in the context...