Author:
Lobov Arseniy,Kuchur Polina,Boyarskaya Nadezhda,Perepletchikova Daria,Taraskin Ivan,Ivashkin Andrei,Kostina Daria,Khvorova Irina,Uspensky Vladimir,Repkin Egor,Denisov Evgeny,Gerashchenko Tatiana,Tikhilov Rashid,Bozhkova Svetlana,Karelkin Vitaly,Wang Chunli,Xu Kang,Malashicheva Anna
Abstract
AbstractOsteogenic differentiation is crucial in normal bone formation and pathological calcification, such as calcific aortic valve disease (CAVD). Understanding the proteomic and transcriptomic landscapes underlying this differentiation can unveil potential therapeutic targets for CAVD. In this study, we employed the timsTOF Pro platform to explore the proteomic profiles of valve interstitial cells (VICs) and osteoblasts during osteogenic differentiation, utilizing three data acquisition/analysis techniques: Data-Dependent Acquisition (DDA-PASEF) and Data-Independent Acquisition (DIA-PASEF) with a classic library based and machine learning-based “library-free” search (DIA-ML). RNA-seq complemented comparative proteome coverage analysis to provide a comprehensive biological reference. We reveal distinct proteomic and transcriptomic profiles between VICs and osteoblasts, highlighting specific biological processes in their osteogenic differentiation pathways. Furthermore, the study identified potential therapeutic targets for CAVD, including the differential expression of proteins such as MAOA and ERK1/2 pathway in VICs. From a technical perspective, the DIA-ML offers significant advantages and seems the method of choice for routine proteomics.
Publisher
Cold Spring Harbor Laboratory