Published December 20, 2022 | Version v2
Dataset Open

MultiplexMS: A mass spectrometry-based multiplexing strategy for ultra-high-throughput analysis of complex mixtures

Description

Abstract: Throughput for chemical analysis of natural products mixtures has not kept pace with recent developments in genome sequencing technologies and laboratory automation for high-throughput screening, leading to a disconnect between chemical and biological profiling at the library scale that limits new molecule discovery. Here we report a new strategy for sample multiplexing that can increase mass spectrometry-based profiling up to 30-fold over traditional methods. This strategy involves the analysis of pooled samples and subsequent computational deconvolution to reconstruct peak lists for each sample in the set. We validated this approach using in silico experiments and demonstrated that the method has a high precision (>97%) for large, pooled samples (n = 30), particularly for infrequently occurring metabolites (n < 10)  of relevance in drug discovery applications. Finally, we repeated a recently reported biological activity profiling study on 925 natural products extracts, leading to the rediscovery of all previously reported bioactive metabolites using just 5% of the previously required MS acquisition time. This new method is compatible with mass spectrometry data from any instrument vendor and is supported by an open-source software package available at https://github.com/liningtonlab/MultiplexMS.Throughput for chemical analysis of natural products mixtures has not kept pace with recent developments in genome sequencing technologies and laboratory automation for high-throughput screening, leading to a disconnect between chemical and biological profiling at the library scale that limits new molecule discovery. Here we report a new strategy for sample multiplexing that can increase mass spectrometry-based profiling up to 30-fold over traditional methods. This strategy involves the analysis of pooled samples and subsequent computational deconvolution to reconstruct peak lists for each sample in the set. We validated this approach using in silico experiments and demonstrated that the method has a high precision (>97%) for large, pooled samples (n = 30), particularly for infrequently occurring metabolites (n < 10)  of relevance in drug discovery applications. Finally, we repeated a recently reported biological activity profiling study on 925 natural products extracts, leading to the rediscovery of all previously reported bioactive metabolites using just 5% of the previously required MS acquisition time. This new method is compatible with mass spectrometry data from any instrument vendor and is supported by an open-source software package available at https://github.com/liningtonlab/MultiplexMS.

Files

100prefractionsmixing.zip

Files (501.2 MB)

Name Size Download all
md5:96a5ee00c95ebdbba2460495e7932679
9.3 MB Preview Download
md5:648ed6e758de599039fb21d342ce4f21
15.1 MB Preview Download
md5:a2afa63630f92adb34ae9bbff4c68cbd
1.6 MB Preview Download
md5:a6398a1ed5fda57dacaf7ccf55756de7
19.4 MB Preview Download
md5:064fb98c0f4c5429df6b770d3c644b41
23.7 MB Preview Download
md5:8e7c008d7afe4a4010841e7d09a8f214
268.3 kB Preview Download
md5:3008217c515af22b3400ec496b65ec4d
83.1 MB Preview Download
md5:96968e58fa476831e1e36f823e19af86
83.1 kB Preview Download
md5:f7acab02a1d2189518b7755934fa9336
348.6 MB Preview Download