Determination of cell dose-survival relationships from endpoint dilution assays

Methods for fitting radiation survival curves to data obtained from endpoint-dilution assays are described. It is shown that for functional forms such as the linear-quadratic model the problem can be recast as a generalized linear model (GLM) and the data fitted using standard software. For function...

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Bibliographic Details
Published in:International Journal of Radiation Biology
Main Author: Roberts, S. A.
Format: Article in Journal/Newspaper
Language:English
Published: 1993
Subjects:
DML
Online Access:https://research.manchester.ac.uk/en/publications/db83301d-d53e-4516-827d-0956df8045d5
https://doi.org/10.1080/09553009314551371
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spelling ftumanchesterpub:oai:pure.atira.dk:publications/db83301d-d53e-4516-827d-0956df8045d5 2023-11-12T04:16:27+01:00 Determination of cell dose-survival relationships from endpoint dilution assays Roberts, S. A. 1993 https://research.manchester.ac.uk/en/publications/db83301d-d53e-4516-827d-0956df8045d5 https://doi.org/10.1080/09553009314551371 eng eng info:eu-repo/semantics/closedAccess Roberts , S A 1993 , ' Determination of cell dose-survival relationships from endpoint dilution assays ' , International Journal of Radiation Biology , vol. 64 , no. 2 , pp. 251-255 . https://doi.org/10.1080/09553009314551371 ASSAY CANCER Cell Survival Colony-Forming Units Assay England linear quadratic model linear-quadratic model methods Models,Biological NUMBER RADIATION Radiation Dosage radiation effects Software Support,Non-U.S.Gov't SURVIVAL article 1993 ftumanchesterpub https://doi.org/10.1080/09553009314551371 2023-10-30T09:11:50Z Methods for fitting radiation survival curves to data obtained from endpoint-dilution assays are described. It is shown that for functional forms such as the linear-quadratic model the problem can be recast as a generalized linear model (GLM) and the data fitted using standard software. For functional forms which are not capable of being linearized, such as the multitarget model, the direct maximum likelihood (DML) techniques of Thames et al. ((1986) can be used. Both these techniques produce exact maximum likelihood parameter estimates. Compared with the weighted least-squares (WLS) approach traditionally employed, these approaches avoid the need to approximate the binomial distribution of the number of negative wells by a normal distribution, and avoid the biases introduced by the need for arbitrary treatment of data points with 0 or 100% negative wells. The results of fittings using the novel GLM and DML approaches are compared with those obtained using the WLS method on a large series of datasets. For most datasets the WLS method performs well, compared with the exact method, but in a small number of cases the WLS predicted parameter estimates can be in error by as much as their estimated standard errors. A method for the use of a concurrent control to correct for interexperimental variation is outlined. The methods have been implemented in a Fortran computer program using the NAG subroutine library. © 1993 Informa UK Ltd All rights reserved: reproduction in whole or part not permitted. Article in Journal/Newspaper DML The University of Manchester: Research Explorer International Journal of Radiation Biology 64 2 251 255
institution Open Polar
collection The University of Manchester: Research Explorer
op_collection_id ftumanchesterpub
language English
topic ASSAY
CANCER
Cell Survival
Colony-Forming Units Assay
England
linear quadratic model
linear-quadratic model
methods
Models,Biological
NUMBER
RADIATION
Radiation Dosage
radiation effects
Software
Support,Non-U.S.Gov't
SURVIVAL
spellingShingle ASSAY
CANCER
Cell Survival
Colony-Forming Units Assay
England
linear quadratic model
linear-quadratic model
methods
Models,Biological
NUMBER
RADIATION
Radiation Dosage
radiation effects
Software
Support,Non-U.S.Gov't
SURVIVAL
Roberts, S. A.
Determination of cell dose-survival relationships from endpoint dilution assays
topic_facet ASSAY
CANCER
Cell Survival
Colony-Forming Units Assay
England
linear quadratic model
linear-quadratic model
methods
Models,Biological
NUMBER
RADIATION
Radiation Dosage
radiation effects
Software
Support,Non-U.S.Gov't
SURVIVAL
description Methods for fitting radiation survival curves to data obtained from endpoint-dilution assays are described. It is shown that for functional forms such as the linear-quadratic model the problem can be recast as a generalized linear model (GLM) and the data fitted using standard software. For functional forms which are not capable of being linearized, such as the multitarget model, the direct maximum likelihood (DML) techniques of Thames et al. ((1986) can be used. Both these techniques produce exact maximum likelihood parameter estimates. Compared with the weighted least-squares (WLS) approach traditionally employed, these approaches avoid the need to approximate the binomial distribution of the number of negative wells by a normal distribution, and avoid the biases introduced by the need for arbitrary treatment of data points with 0 or 100% negative wells. The results of fittings using the novel GLM and DML approaches are compared with those obtained using the WLS method on a large series of datasets. For most datasets the WLS method performs well, compared with the exact method, but in a small number of cases the WLS predicted parameter estimates can be in error by as much as their estimated standard errors. A method for the use of a concurrent control to correct for interexperimental variation is outlined. The methods have been implemented in a Fortran computer program using the NAG subroutine library. © 1993 Informa UK Ltd All rights reserved: reproduction in whole or part not permitted.
format Article in Journal/Newspaper
author Roberts, S. A.
author_facet Roberts, S. A.
author_sort Roberts, S. A.
title Determination of cell dose-survival relationships from endpoint dilution assays
title_short Determination of cell dose-survival relationships from endpoint dilution assays
title_full Determination of cell dose-survival relationships from endpoint dilution assays
title_fullStr Determination of cell dose-survival relationships from endpoint dilution assays
title_full_unstemmed Determination of cell dose-survival relationships from endpoint dilution assays
title_sort determination of cell dose-survival relationships from endpoint dilution assays
publishDate 1993
url https://research.manchester.ac.uk/en/publications/db83301d-d53e-4516-827d-0956df8045d5
https://doi.org/10.1080/09553009314551371
genre DML
genre_facet DML
op_source Roberts , S A 1993 , ' Determination of cell dose-survival relationships from endpoint dilution assays ' , International Journal of Radiation Biology , vol. 64 , no. 2 , pp. 251-255 . https://doi.org/10.1080/09553009314551371
op_rights info:eu-repo/semantics/closedAccess
op_doi https://doi.org/10.1080/09553009314551371
container_title International Journal of Radiation Biology
container_volume 64
container_issue 2
container_start_page 251
op_container_end_page 255
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