Cholesterol-recognizing amino acid consensus motifs in transmembrane proteins: Comparative analysis of in silico studies and structural data
Abstract: Cholesterol binding to proteins is a dynamic process that involves a combination of geometric, biochemical, and biophysical principles. These properties can be viewed as basic rules which govern any kind of molecular interactions. Nevertheless, cholesterol displays unique features that have made cholesterol recognition motifs in proteins remarkably convergent upon biological evolution. Consequently, simple algorithms based on consensus amino acid sequences (e.g., CARC and CRAC) have been developed to predict the presence of such cholesterol-binding motifs in proteins. The intrinsic weakness of this approach is that CARC and CRAC are both based on a linear (1D) sequence motif, whereas cholesterol-binding sites have a three-dimensional (3D) structure. This issue is discussed in detail in this chapter. We then analyze the performance of these algorithms in the light of structural data obtained by X-ray diffraction and cryoelectron microscopy of membrane proteins, and structure-function studies based on site-directed mutagenesis. Our study not only confirms the overall reliability of CARC and CRAC algorithms but also reveals new clues that could bring forth new ideas on cholesterol recognition motifs in the 3D structure of transmembrane proteins.
Main Authors: | , , , , , |
---|---|
Format: | Parte de libro biblioteca |
Language: | eng |
Published: |
Academic Press
2022
|
Subjects: | COLESTEROL, AMINOACIDOS, MEMBRANAS CELULARES, |
Online Access: | https://repositorio.uca.edu.ar/handle/123456789/14433 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
id |
oai:ucacris:123456789-14433 |
---|---|
record_format |
koha |
spelling |
oai:ucacris:123456789-144332023-03-01T15:35:04Z Cholesterol-recognizing amino acid consensus motifs in transmembrane proteins: Comparative analysis of in silico studies and structural data Azzaz, Fodil Chahinian, Henri Yahi, Nouara Di Scala, Coralie Baier, Carlos J. Barrantes, Francisco José COLESTEROL AMINOACIDOS MEMBRANAS CELULARES Abstract: Cholesterol binding to proteins is a dynamic process that involves a combination of geometric, biochemical, and biophysical principles. These properties can be viewed as basic rules which govern any kind of molecular interactions. Nevertheless, cholesterol displays unique features that have made cholesterol recognition motifs in proteins remarkably convergent upon biological evolution. Consequently, simple algorithms based on consensus amino acid sequences (e.g., CARC and CRAC) have been developed to predict the presence of such cholesterol-binding motifs in proteins. The intrinsic weakness of this approach is that CARC and CRAC are both based on a linear (1D) sequence motif, whereas cholesterol-binding sites have a three-dimensional (3D) structure. This issue is discussed in detail in this chapter. We then analyze the performance of these algorithms in the light of structural data obtained by X-ray diffraction and cryoelectron microscopy of membrane proteins, and structure-function studies based on site-directed mutagenesis. Our study not only confirms the overall reliability of CARC and CRAC algorithms but also reveals new clues that could bring forth new ideas on cholesterol recognition motifs in the 3D structure of transmembrane proteins. 2022-07-14T14:49:41Z 2022-07-14T14:49:41Z 2022 Parte de libro Azzaz, F., et al. Cholesterol-recognizing amino acid consensus motifs in transmembrane proteins: Comparative analysis of in silico studies and structural data [en línea]. En: Bukiya, A.N., Dopico, A.M. (eds.). Cholesterol. From Chemistry and Biophysics to the Clinic. Londres: Academic Press, 2022 doi:10.1016/B978-0-323-85857-1.00004-3 Disponible en: https://repositorio.uca.edu.ar/handle/123456789/14433 978-0-323-85857-1 https://repositorio.uca.edu.ar/handle/123456789/14433 10.1016/B978-0-323-85857-1.00004-3 eng info:eu-repo/semantics/closedAccess http://creativecommons.org/licenses/by-nc-sa/4.0/ application/pdf Academic Press Bukiya, A.N., Dopico, A.M. (eds.). Cholesterol. From Chemistry and Biophysics to the Clinic. Londres: Academic Press, 2022 |
institution |
UCA |
collection |
DSpace |
country |
Argentina |
countrycode |
AR |
component |
Bibliográfico |
access |
En linea |
databasecode |
dig-uca |
tag |
biblioteca |
region |
America del Sur |
libraryname |
Sistema de bibliotecas de la UCA |
language |
eng |
topic |
COLESTEROL AMINOACIDOS MEMBRANAS CELULARES COLESTEROL AMINOACIDOS MEMBRANAS CELULARES |
spellingShingle |
COLESTEROL AMINOACIDOS MEMBRANAS CELULARES COLESTEROL AMINOACIDOS MEMBRANAS CELULARES Azzaz, Fodil Chahinian, Henri Yahi, Nouara Di Scala, Coralie Baier, Carlos J. Barrantes, Francisco José Cholesterol-recognizing amino acid consensus motifs in transmembrane proteins: Comparative analysis of in silico studies and structural data |
description |
Abstract: Cholesterol binding to proteins is a dynamic process that involves a combination of geometric, biochemical, and biophysical principles. These properties can be viewed as basic rules which govern any kind of molecular interactions. Nevertheless, cholesterol displays unique features that have made cholesterol recognition motifs in proteins remarkably convergent upon biological evolution. Consequently, simple algorithms based on consensus amino acid sequences (e.g., CARC and CRAC) have been developed to predict the presence of such cholesterol-binding motifs in proteins. The intrinsic weakness of this approach is that CARC and CRAC are both based on a linear (1D) sequence motif, whereas cholesterol-binding sites have a three-dimensional (3D) structure. This issue is discussed in detail in this chapter. We then analyze the performance of these algorithms in the light of structural data obtained by X-ray diffraction and cryoelectron microscopy of membrane proteins, and structure-function studies based on site-directed mutagenesis. Our study not only confirms the overall reliability of CARC and CRAC algorithms but also reveals new clues that could bring forth new ideas on cholesterol recognition motifs in the 3D structure of transmembrane proteins. |
format |
Parte de libro |
topic_facet |
COLESTEROL AMINOACIDOS MEMBRANAS CELULARES |
author |
Azzaz, Fodil Chahinian, Henri Yahi, Nouara Di Scala, Coralie Baier, Carlos J. Barrantes, Francisco José |
author_facet |
Azzaz, Fodil Chahinian, Henri Yahi, Nouara Di Scala, Coralie Baier, Carlos J. Barrantes, Francisco José |
author_sort |
Azzaz, Fodil |
title |
Cholesterol-recognizing amino acid consensus motifs in transmembrane proteins: Comparative analysis of in silico studies and structural data |
title_short |
Cholesterol-recognizing amino acid consensus motifs in transmembrane proteins: Comparative analysis of in silico studies and structural data |
title_full |
Cholesterol-recognizing amino acid consensus motifs in transmembrane proteins: Comparative analysis of in silico studies and structural data |
title_fullStr |
Cholesterol-recognizing amino acid consensus motifs in transmembrane proteins: Comparative analysis of in silico studies and structural data |
title_full_unstemmed |
Cholesterol-recognizing amino acid consensus motifs in transmembrane proteins: Comparative analysis of in silico studies and structural data |
title_sort |
cholesterol-recognizing amino acid consensus motifs in transmembrane proteins: comparative analysis of in silico studies and structural data |
publisher |
Academic Press |
publishDate |
2022 |
url |
https://repositorio.uca.edu.ar/handle/123456789/14433 |
work_keys_str_mv |
AT azzazfodil cholesterolrecognizingaminoacidconsensusmotifsintransmembraneproteinscomparativeanalysisofinsilicostudiesandstructuraldata AT chahinianhenri cholesterolrecognizingaminoacidconsensusmotifsintransmembraneproteinscomparativeanalysisofinsilicostudiesandstructuraldata AT yahinouara cholesterolrecognizingaminoacidconsensusmotifsintransmembraneproteinscomparativeanalysisofinsilicostudiesandstructuraldata AT discalacoralie cholesterolrecognizingaminoacidconsensusmotifsintransmembraneproteinscomparativeanalysisofinsilicostudiesandstructuraldata AT baiercarlosj cholesterolrecognizingaminoacidconsensusmotifsintransmembraneproteinscomparativeanalysisofinsilicostudiesandstructuraldata AT barrantesfranciscojose cholesterolrecognizingaminoacidconsensusmotifsintransmembraneproteinscomparativeanalysisofinsilicostudiesandstructuraldata |
_version_ |
1762928590218854400 |