Cargando…

An Innovative Non-Linear Prediction Model for Clinical Benefit in Women with Newly Diagnosed Breast Cancer Using Baseline FDG-PET/CT and Clinical Data

SIMPLE SUMMARY: This study aimed to develop an innovative non-linear statistical model to predict clinical benefit in women with newly diagnosed breast cancer. A logistic generalized additive model was chosen as an innovative statistical approach, as opposed to conventional techniques. Clinical data...

Descripción completa

Detalles Bibliográficos
Autores principales: Kudura, Ken, Ritz, Nando, Templeton, Arnoud J., Kutzker, Tim, Hoffmann, Martin H. K., Antwi, Kwadwo, Zwahlen, Daniel R., Kreissl, Michael C., Foerster, Robert
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10670812/
https://www.ncbi.nlm.nih.gov/pubmed/38001736
http://dx.doi.org/10.3390/cancers15225476
_version_ 1785149351843069952
author Kudura, Ken
Ritz, Nando
Templeton, Arnoud J.
Kutzker, Tim
Hoffmann, Martin H. K.
Antwi, Kwadwo
Zwahlen, Daniel R.
Kreissl, Michael C.
Foerster, Robert
author_facet Kudura, Ken
Ritz, Nando
Templeton, Arnoud J.
Kutzker, Tim
Hoffmann, Martin H. K.
Antwi, Kwadwo
Zwahlen, Daniel R.
Kreissl, Michael C.
Foerster, Robert
author_sort Kudura, Ken
collection PubMed
description SIMPLE SUMMARY: This study aimed to develop an innovative non-linear statistical model to predict clinical benefit in women with newly diagnosed breast cancer. A logistic generalized additive model was chosen as an innovative statistical approach, as opposed to conventional techniques. Clinical data, primary tumor (PT) features on baseline [(18)F]-fluorodeoxyglucose positron emission tomography/computed tomography (FDG-PET/CT), and molecular subtype were considered for the purpose of the investigations. In this retrospective study of 70 women, higher primary tumor volume and metabolic parameters significantly compromised clinical benefit. A multivariate model for clinical benefit, incorporating age, body mass index, T, M, PT total lesion glycolysis, and PT volume, demonstrated excellent accuracy across the molecular subtypes. Our results emphasized the pivotal role of baseline FDG-PET/CT in predicting treatment outcomes. However, careful consideration is warranted when choosing the methodological approach for treatment outcome prediction, as non-linear influences of predictive biomarkers on clinical benefit were unveiled. ABSTRACT: Objectives: We aimed to develop a novel non-linear statistical model integrating primary tumor features on baseline [(18)F]-fluorodeoxyglucose positron emission tomography/computed tomography (FDG-PET/CT), molecular subtype, and clinical data for treatment benefit prediction in women with newly diagnosed breast cancer using innovative statistical techniques, as opposed to conventional methodological approaches. Methods: In this single-center retrospective study, we conducted a comprehensive assessment of women newly diagnosed with breast cancer who had undergone a FDG-PET/CT scan for staging prior to treatment. Primary tumor (PT) volume, maximum and mean standardized uptake value (SUVmax and SUVmean), metabolic tumor volume (MTV), and total lesion glycolysis (TLG) were measured on PET/CT. Clinical data including clinical staging (TNM) but also PT anatomical site, histology, receptor status, proliferation index, and molecular subtype were obtained from the medical records. Overall survival (OS), progression-free survival (PFS), and clinical benefit (CB) were assessed as endpoints. A logistic generalized additive model was chosen as the statistical approach to assess the impact of all listed variables on CB. Results: 70 women with newly diagnosed breast cancer (mean age 63.3 ± 15.4 years) were included. The most common location of breast cancer was the upper outer quadrant (40.0%) in the left breast (52.9%). An invasive ductal adenocarcinoma (88.6%) with a high tumor proliferation index (mean ki-67 expression 35.1 ± 24.5%) and molecular subtype B (51.4%) was by far the most detected breast tumor. Most PTs displayed on hybrid imaging a greater volume (12.8 ± 30.4 cm(3)) with hypermetabolism (mean ± SD of PT maximum SUVmax, SUVmean, MTV, and TLG, respectively: 8.1 ± 7.2, 4.9 ± 4.4, 12.7 ± 30.4, and 47.4 ± 80.2). Higher PT volume (p < 0.01), SUVmax (p = 0.04), SUVmean (p = 0.03), and MTV (<0.01) significantly compromised CB. A considerable majority of patients survived throughout this period (92.8%), while five women died (7.2%). In fact, the OS was 31.7 ± 14.2 months and PFS was 30.2 ± 14.1 months. A multivariate prediction model for CB with excellent accuracy could be developed using age, body mass index (BMI), T, M, PT TLG, and PT volume as predictive parameters. PT volume and PT TLG demonstrated a significant influence on CB in lower ranges; however, beyond a specific cutoff value (respectively, 29.52 cm(3) for PT volume and 161.95 cm(3) for PT TLG), their impact on CB only reached negligible levels. Ultimately, the absence of distant metastasis M displayed a strong positive impact on CB far ahead of the tumor size T (standardized average estimate 0.88 vs. 0.4). Conclusions: Our results emphasized the pivotal role played by FDG-PET/CT prior to treatment in forecasting treatment outcomes in women newly diagnosed with breast cancer. Nevertheless, careful consideration is required when selecting the methodological approach, as our innovative statistical techniques unveiled non-linear influences of predictive biomarkers on treatment benefit, highlighting also the importance of early breast cancer diagnosis.
format Online
Article
Text
id pubmed-10670812
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-106708122023-11-20 An Innovative Non-Linear Prediction Model for Clinical Benefit in Women with Newly Diagnosed Breast Cancer Using Baseline FDG-PET/CT and Clinical Data Kudura, Ken Ritz, Nando Templeton, Arnoud J. Kutzker, Tim Hoffmann, Martin H. K. Antwi, Kwadwo Zwahlen, Daniel R. Kreissl, Michael C. Foerster, Robert Cancers (Basel) Article SIMPLE SUMMARY: This study aimed to develop an innovative non-linear statistical model to predict clinical benefit in women with newly diagnosed breast cancer. A logistic generalized additive model was chosen as an innovative statistical approach, as opposed to conventional techniques. Clinical data, primary tumor (PT) features on baseline [(18)F]-fluorodeoxyglucose positron emission tomography/computed tomography (FDG-PET/CT), and molecular subtype were considered for the purpose of the investigations. In this retrospective study of 70 women, higher primary tumor volume and metabolic parameters significantly compromised clinical benefit. A multivariate model for clinical benefit, incorporating age, body mass index, T, M, PT total lesion glycolysis, and PT volume, demonstrated excellent accuracy across the molecular subtypes. Our results emphasized the pivotal role of baseline FDG-PET/CT in predicting treatment outcomes. However, careful consideration is warranted when choosing the methodological approach for treatment outcome prediction, as non-linear influences of predictive biomarkers on clinical benefit were unveiled. ABSTRACT: Objectives: We aimed to develop a novel non-linear statistical model integrating primary tumor features on baseline [(18)F]-fluorodeoxyglucose positron emission tomography/computed tomography (FDG-PET/CT), molecular subtype, and clinical data for treatment benefit prediction in women with newly diagnosed breast cancer using innovative statistical techniques, as opposed to conventional methodological approaches. Methods: In this single-center retrospective study, we conducted a comprehensive assessment of women newly diagnosed with breast cancer who had undergone a FDG-PET/CT scan for staging prior to treatment. Primary tumor (PT) volume, maximum and mean standardized uptake value (SUVmax and SUVmean), metabolic tumor volume (MTV), and total lesion glycolysis (TLG) were measured on PET/CT. Clinical data including clinical staging (TNM) but also PT anatomical site, histology, receptor status, proliferation index, and molecular subtype were obtained from the medical records. Overall survival (OS), progression-free survival (PFS), and clinical benefit (CB) were assessed as endpoints. A logistic generalized additive model was chosen as the statistical approach to assess the impact of all listed variables on CB. Results: 70 women with newly diagnosed breast cancer (mean age 63.3 ± 15.4 years) were included. The most common location of breast cancer was the upper outer quadrant (40.0%) in the left breast (52.9%). An invasive ductal adenocarcinoma (88.6%) with a high tumor proliferation index (mean ki-67 expression 35.1 ± 24.5%) and molecular subtype B (51.4%) was by far the most detected breast tumor. Most PTs displayed on hybrid imaging a greater volume (12.8 ± 30.4 cm(3)) with hypermetabolism (mean ± SD of PT maximum SUVmax, SUVmean, MTV, and TLG, respectively: 8.1 ± 7.2, 4.9 ± 4.4, 12.7 ± 30.4, and 47.4 ± 80.2). Higher PT volume (p < 0.01), SUVmax (p = 0.04), SUVmean (p = 0.03), and MTV (<0.01) significantly compromised CB. A considerable majority of patients survived throughout this period (92.8%), while five women died (7.2%). In fact, the OS was 31.7 ± 14.2 months and PFS was 30.2 ± 14.1 months. A multivariate prediction model for CB with excellent accuracy could be developed using age, body mass index (BMI), T, M, PT TLG, and PT volume as predictive parameters. PT volume and PT TLG demonstrated a significant influence on CB in lower ranges; however, beyond a specific cutoff value (respectively, 29.52 cm(3) for PT volume and 161.95 cm(3) for PT TLG), their impact on CB only reached negligible levels. Ultimately, the absence of distant metastasis M displayed a strong positive impact on CB far ahead of the tumor size T (standardized average estimate 0.88 vs. 0.4). Conclusions: Our results emphasized the pivotal role played by FDG-PET/CT prior to treatment in forecasting treatment outcomes in women newly diagnosed with breast cancer. Nevertheless, careful consideration is required when selecting the methodological approach, as our innovative statistical techniques unveiled non-linear influences of predictive biomarkers on treatment benefit, highlighting also the importance of early breast cancer diagnosis. MDPI 2023-11-20 /pmc/articles/PMC10670812/ /pubmed/38001736 http://dx.doi.org/10.3390/cancers15225476 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Kudura, Ken
Ritz, Nando
Templeton, Arnoud J.
Kutzker, Tim
Hoffmann, Martin H. K.
Antwi, Kwadwo
Zwahlen, Daniel R.
Kreissl, Michael C.
Foerster, Robert
An Innovative Non-Linear Prediction Model for Clinical Benefit in Women with Newly Diagnosed Breast Cancer Using Baseline FDG-PET/CT and Clinical Data
title An Innovative Non-Linear Prediction Model for Clinical Benefit in Women with Newly Diagnosed Breast Cancer Using Baseline FDG-PET/CT and Clinical Data
title_full An Innovative Non-Linear Prediction Model for Clinical Benefit in Women with Newly Diagnosed Breast Cancer Using Baseline FDG-PET/CT and Clinical Data
title_fullStr An Innovative Non-Linear Prediction Model for Clinical Benefit in Women with Newly Diagnosed Breast Cancer Using Baseline FDG-PET/CT and Clinical Data
title_full_unstemmed An Innovative Non-Linear Prediction Model for Clinical Benefit in Women with Newly Diagnosed Breast Cancer Using Baseline FDG-PET/CT and Clinical Data
title_short An Innovative Non-Linear Prediction Model for Clinical Benefit in Women with Newly Diagnosed Breast Cancer Using Baseline FDG-PET/CT and Clinical Data
title_sort innovative non-linear prediction model for clinical benefit in women with newly diagnosed breast cancer using baseline fdg-pet/ct and clinical data
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10670812/
https://www.ncbi.nlm.nih.gov/pubmed/38001736
http://dx.doi.org/10.3390/cancers15225476
work_keys_str_mv AT kuduraken aninnovativenonlinearpredictionmodelforclinicalbenefitinwomenwithnewlydiagnosedbreastcancerusingbaselinefdgpetctandclinicaldata
AT ritznando aninnovativenonlinearpredictionmodelforclinicalbenefitinwomenwithnewlydiagnosedbreastcancerusingbaselinefdgpetctandclinicaldata
AT templetonarnoudj aninnovativenonlinearpredictionmodelforclinicalbenefitinwomenwithnewlydiagnosedbreastcancerusingbaselinefdgpetctandclinicaldata
AT kutzkertim aninnovativenonlinearpredictionmodelforclinicalbenefitinwomenwithnewlydiagnosedbreastcancerusingbaselinefdgpetctandclinicaldata
AT hoffmannmartinhk aninnovativenonlinearpredictionmodelforclinicalbenefitinwomenwithnewlydiagnosedbreastcancerusingbaselinefdgpetctandclinicaldata
AT antwikwadwo aninnovativenonlinearpredictionmodelforclinicalbenefitinwomenwithnewlydiagnosedbreastcancerusingbaselinefdgpetctandclinicaldata
AT zwahlendanielr aninnovativenonlinearpredictionmodelforclinicalbenefitinwomenwithnewlydiagnosedbreastcancerusingbaselinefdgpetctandclinicaldata
AT kreisslmichaelc aninnovativenonlinearpredictionmodelforclinicalbenefitinwomenwithnewlydiagnosedbreastcancerusingbaselinefdgpetctandclinicaldata
AT foersterrobert aninnovativenonlinearpredictionmodelforclinicalbenefitinwomenwithnewlydiagnosedbreastcancerusingbaselinefdgpetctandclinicaldata
AT kuduraken innovativenonlinearpredictionmodelforclinicalbenefitinwomenwithnewlydiagnosedbreastcancerusingbaselinefdgpetctandclinicaldata
AT ritznando innovativenonlinearpredictionmodelforclinicalbenefitinwomenwithnewlydiagnosedbreastcancerusingbaselinefdgpetctandclinicaldata
AT templetonarnoudj innovativenonlinearpredictionmodelforclinicalbenefitinwomenwithnewlydiagnosedbreastcancerusingbaselinefdgpetctandclinicaldata
AT kutzkertim innovativenonlinearpredictionmodelforclinicalbenefitinwomenwithnewlydiagnosedbreastcancerusingbaselinefdgpetctandclinicaldata
AT hoffmannmartinhk innovativenonlinearpredictionmodelforclinicalbenefitinwomenwithnewlydiagnosedbreastcancerusingbaselinefdgpetctandclinicaldata
AT antwikwadwo innovativenonlinearpredictionmodelforclinicalbenefitinwomenwithnewlydiagnosedbreastcancerusingbaselinefdgpetctandclinicaldata
AT zwahlendanielr innovativenonlinearpredictionmodelforclinicalbenefitinwomenwithnewlydiagnosedbreastcancerusingbaselinefdgpetctandclinicaldata
AT kreisslmichaelc innovativenonlinearpredictionmodelforclinicalbenefitinwomenwithnewlydiagnosedbreastcancerusingbaselinefdgpetctandclinicaldata
AT foersterrobert innovativenonlinearpredictionmodelforclinicalbenefitinwomenwithnewlydiagnosedbreastcancerusingbaselinefdgpetctandclinicaldata