Hormone therapy with tamoxifen has long been the established adjuvant treatment for node-positive, estrogen-receptor-positive breast cancer in postmenopausal women. Since 30-40% of these patients fail to respond, reliable outcome prediction is necessary for successful treatment allocation. Using pathobiological variables (available in most clinical records: tumor size, nodal involvement, estrogen and progesterone receptor content) from 596 patients recruited at a comprehensive cancer center, we developed a prediction model which we validated in an independent cohort of 175 patients recruited at a general hospital. Calculated at 3 and 4 years of follow-up, the discrimination indices were 0.716 [confidence limits (CL) 0.641, 0.752] and 0.714 (CL 0.650, 0.750) for the training data, and 0.726 (CL 0.591, 0.769) and 0.677 (CL 0.580, 0.745) for the testing data. Waiting for more effective approaches from genomic and proteomic studies, a model based on consolidated pathobiological variables routinely assessed at relatively low costs may be considered as the reference for assessing the gain of new markers over traditional ones, thus substantially improving the conventional use of prognostic criteria.

A prediction model for breast cancer recurrence after adjuvant hormone therapy / P. Boracchi, D. Coradini, S. Antolini, S. Oriana, R. Dittadi, M. Gion, M.G. Daidone, E. Biganzoli. - In: THE INTERNATIONAL JOURNAL OF BIOLOGICAL MARKERS. - ISSN 0393-6155. - 23:4(2008), pp. 199-206.

A prediction model for breast cancer recurrence after adjuvant hormone therapy

P. Boracchi
Primo
;
E. Biganzoli
Ultimo
2008

Abstract

Hormone therapy with tamoxifen has long been the established adjuvant treatment for node-positive, estrogen-receptor-positive breast cancer in postmenopausal women. Since 30-40% of these patients fail to respond, reliable outcome prediction is necessary for successful treatment allocation. Using pathobiological variables (available in most clinical records: tumor size, nodal involvement, estrogen and progesterone receptor content) from 596 patients recruited at a comprehensive cancer center, we developed a prediction model which we validated in an independent cohort of 175 patients recruited at a general hospital. Calculated at 3 and 4 years of follow-up, the discrimination indices were 0.716 [confidence limits (CL) 0.641, 0.752] and 0.714 (CL 0.650, 0.750) for the training data, and 0.726 (CL 0.591, 0.769) and 0.677 (CL 0.580, 0.745) for the testing data. Waiting for more effective approaches from genomic and proteomic studies, a model based on consolidated pathobiological variables routinely assessed at relatively low costs may be considered as the reference for assessing the gain of new markers over traditional ones, thus substantially improving the conventional use of prognostic criteria.
English
Adjuvant tamoxifen; Breast cancer; Nomogram; Relapse prediction
Settore MED/01 - Statistica Medica
Articolo
Sì, ma tipo non specificato
2008
Wichtig
23
4
199
206
Periodico con rilevanza internazionale
http://www.biological-markers.com/public/JBM/default.aspx
info:eu-repo/semantics/article
A prediction model for breast cancer recurrence after adjuvant hormone therapy / P. Boracchi, D. Coradini, S. Antolini, S. Oriana, R. Dittadi, M. Gion, M.G. Daidone, E. Biganzoli. - In: THE INTERNATIONAL JOURNAL OF BIOLOGICAL MARKERS. - ISSN 0393-6155. - 23:4(2008), pp. 199-206.
none
Prodotti della ricerca::01 - Articolo su periodico
8
262
Article (author)
si
P. Boracchi, D. Coradini, S. Antolini, S. Oriana, R. Dittadi, M. Gion, M.G. Daidone, E. Biganzoli
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/56436
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