SORZANO, Carlos, Amaya JIMÉNEZ-MORENO, David MALUENDA, Marta MARTÍNEZ, Erney RAMÍREZ-APORTELA, James KRIEGER, Roberto MELERO, Ana CUERVO, Javier CONESA, Jiří FILIPOVIČ, Pablo CONESA, Laura del CAÑO, Yunior FONSECA, Jorge Jiménez-de LA MORENA, Patricia LOSANA, Ruben SÁNCHEZ-GARCÍA, David STŘELÁK, Estrella FERNÁNDEZ-GIMÉNEZ, Federico DE ISIDRO-GÓMEZ, David HERREROS, Jose Luis VILAS, Roberto MARABINI a Jose Maria CARAZO. On bias, variance, overfitting, gold standard and consensus in single-particle analysis by cryo-electron microscopy. Acta Crystallographica Section D: Structural Biology. Chester: International Union of Crystallography, 2022, roč. 78, č. 4, s. 410-423. ISSN 2059-7983. Dostupné z: https://dx.doi.org/10.1107/S2059798322001978.
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Základní údaje
Originální název On bias, variance, overfitting, gold standard and consensus in single-particle analysis by cryo-electron microscopy
Autoři SORZANO, Carlos, Amaya JIMÉNEZ-MORENO, David MALUENDA, Marta MARTÍNEZ, Erney RAMÍREZ-APORTELA, James KRIEGER, Roberto MELERO, Ana CUERVO, Javier CONESA, Jiří FILIPOVIČ (203 Česká republika, domácí), Pablo CONESA, Laura del CAÑO, Yunior FONSECA, Jorge Jiménez-de LA MORENA, Patricia LOSANA, Ruben SÁNCHEZ-GARCÍA, David STŘELÁK (203 Česká republika, garant, domácí), Estrella FERNÁNDEZ-GIMÉNEZ, Federico DE ISIDRO-GÓMEZ, David HERREROS, Jose Luis VILAS, Roberto MARABINI a Jose Maria CARAZO.
Vydání Acta Crystallographica Section D: Structural Biology, Chester, International Union of Crystallography, 2022, 2059-7983.
Další údaje
Originální jazyk angličtina
Typ výsledku Článek v odborném periodiku
Obor 10201 Computer sciences, information science, bioinformatics
Stát vydavatele Velká Británie a Severní Irsko
Utajení není předmětem státního či obchodního tajemství
WWW URL
Impakt faktor Impact factor: 2.200
Kód RIV RIV/00216224:14330/22:00125553
Organizační jednotka Fakulta informatiky
Doi http://dx.doi.org/10.1107/S2059798322001978
UT WoS 000777860500002
Klíčová slova anglicky single-particle analysis; cryo-electron microscopy; parameter estimation; image processing; bias; variance; overfitting; gold standard
Štítky D1
Příznaky Mezinárodní význam, Recenzováno
Změnil Změnil: RNDr. Pavel Šmerk, Ph.D., učo 3880. Změněno: 28. 3. 2023 10:10.
Anotace
Cryo-electron microscopy (cryoEM) has become a well established technique to elucidate the 3D structures of biological macromolecules. Projection images from thousands of macromolecules that are assumed to be structurally identical are combined into a single 3D map representing the Coulomb potential of the macromolecule under study. This article discusses possible caveats along the image-processing path and how to avoid them to obtain a reliable 3D structure. Some of these problems are very well known in the community. These may be referred to as sample-related (such as specimen denaturation at interfaces or non-uniform projection geometry leading to underrepresented projection directions). The rest are related to the algorithms used. While some have been discussed in depth in the literature, such as the use of an incorrect initial volume, others have received much less attention. However, they are fundamental in any data-analysis approach. Chiefly among them, instabilities in estimating many of the key parameters that are required for a correct 3D reconstruction that occur all along the processing workflow are referred to, which may significantly affect the reliability of the whole process. In the field, the term overfitting has been coined to refer to some particular kinds of artifacts. It is argued that overfitting is a statistical bias in key parameter-estimation steps in the 3D reconstruction process, including intrinsic algorithmic bias. It is also shown that common tools (Fourier shell correlation) and strategies (gold standard) that are normally used to detect or prevent overfitting do not fully protect against it. Alternatively, it is proposed that detecting the bias that leads to overfitting is much easier when addressed at the level of parameter estimation, rather than detecting it once the particle images have been combined into a 3D map. Comparing the results from multiple algorithms (or at least, independent executions of the same algorithm) can detect parameter bias. These multiple executions could then be averaged to give a lower variance estimate of the underlying parameters.
Návaznosti
EF16_013/0001802, projekt VaVNázev: CERIT Scientific Cloud
MUNI/A/1145/2021, interní kód MUNázev: Rozsáhlé výpočetní systémy: modely, aplikace a verifikace XI. (Akronym: SV-FI MAV XI.)
Investor: Masarykova univerzita, Rozsáhlé výpočetní systémy: modely, aplikace a verifikace XI.
VytisknoutZobrazeno: 19. 7. 2024 12:19