Weighting in NONMEM

3 messages 3 people Latest: Apr 20, 2006

Weighting in NONMEM

From: Patrick Zhou Date: April 19, 2006 technical
From: Patrick Zhou patrickmzhou@yahoo.com Subject: [NMusers] Weighting in NONMEM Date: Wed, 19 Apr 2006 13:03:20 -0700 (PDT) Dear All, In NONMEM, we can assign a weight during minimization by using W=F (interatively reweighted least square weighting) in the $ERROR. What if we do not provide weight in the $ERROR, what does NONMEM use? OLS, ELS or something else. Can somebody comment on it? Thank you very much. Pat

RE: Weighting in NONMEM

From: Pascal Girard Date: April 20, 2006 technical
From: "GIRARD PASCAL" PASCAL.GIRARD@adm.univ-lyon1.fr Subject: RE: [NMusers] Weighting in NONMEM Date: Thu, 20 Apr 2006 08:12:57 +0200 Dear Pat, Writing W=whatever in $ERROR has no action at all on NONMEM weightings. The purpose of writing this is simply to compute individual weighted residuals (IWRES) which are not part of NONMEM output, as opposed to population WRES provided by NONMEM. IWRES have to be computed according to individual predictions F, evaluated according to POSTHOC ETAs which are evaluated either with POSTHOC option if you use FO or are part of the computation with FOCE. Best regards, Pascal Dr Pascal Girard EA 3738, Ciblage Thrapeutique en Oncologie Fac Mdecine Lyon-Sud, BP12 69921 OULLINS Cedex France Tel +33 (0)4 26 23 59 54 / Fax +33 (0)4 26 23 59 76

RE: Weighting in NONMEM

From: William Bachman Date: April 20, 2006 technical
From: "Bill Bachman" bachmanw@comcast.net Subject: RE: [NMusers] Weighting in NONMEM Date: Thu, 20 Apr 2006 08:02:06 -0400 As Pascal suggests, weighting is accomplished in NONMEM via the variance model that you code in your model. This is the real attraction of maximum likelihood methods, rather than choosing an arbitrary empirical weighting scheme, the variance parameters are fitted in the regression and the weighting is then done via the theoretically correct method the inverse of the variance. (Of course assumes that you have used an appropriate variance model via the modeling process). _______________________________________________________