Suscribirse

Incorporating SULF1 polymorphisms in a pretreatment CT-based radiomic model for predicting platinum resistance in ovarian cancer treatment - 19/12/20

Doi : 10.1016/j.biopha.2020.111013 
Xiaoping Yi a, b, 1, Yingzi Liu c, d, e, f, 1, Bolun Zhou g, 1, Wang Xiang h, Aojian Deng h, Yan Fu h, Yuanzhe Zhao h, Qianying Ouyang c, d, e, f, Yujie Liu c, d, e, f, Zeen Sun c, d, e, f, Keqiang Zhang i, Xi Li c, d, e, f, Feiyue Zeng a, b, , Honghao Zhou c, d, e, f, Bihong T. Chen j
a Department of Radiology, Xiangya Hospital, Central South University, Changsha 410008, PR China 
b National Clinical Research Center for Geriatric Disorders (Xiangya Hospital), Central South University, Changsha 410008, PR China 
c Department of Clinical Pharmacology, Xiangya Hospital, Central South University, Changsha 410008, PR China 
d Institute of Clinical Pharmacology, Central South University, Hunan Key Laboratory of Pharmacogenetics, Changsha 410008, PR China 
e Engineering Research Center of Applied Technology of Pharmacogenomics, Ministry of Education, Changsha 410008, PR China 
f National Clinical Research Center for Geriatric Disorders, Changsha 410008, PR China 
g Xiangya School of Medicine, Central South University, Changsha 410013, PR China 
h Department of Radiology, Hunan Provincial Tumor Hospital, The Affiliated Tumor Hospital of Xiangya Medical School of Central South University, Changsha 410008, PR China 
i Hunan Provincial Tumor Hospital, The Affiliated Tumor Hospital of Xiangya Medical School of Central South University, Changsha 410008, PR China 
j Department of Diagnostic Radiology, City of Hope National Medical Center, Duarte, CA, United States 

Corresponding author at: Department of Radiology, Xiangya Hospital, Central South University, Changsha 410008, PR China.Department of RadiologyXiangya HospitalCentral South UniversityChangsha410008PR China

Bienvenido a EM-consulte, la referencia de los profesionales de la salud.
El acceso al texto completo de este artículo requiere una suscripción.

páginas 8
Iconografías 6
Vídeos 0
Otros 0

Graphical abstract




El texto completo de este artículo está disponible en PDF.

Highlights

Early detection of platinum resistance for OC treatment remains challenging.
We built a prediction model incorporating genomic data of SULF1 with CT radiomics.
Our model showed promising prediction efficiency with potential clinical utility.
Radiogenomics is a promising method to noninvasive prediction of chemoresistance.

El texto completo de este artículo está disponible en PDF.

Abstract

Objective

Early detection of platinum resistance for ovarian cancer treatment remains challenging. This study aims to develop a machine learning model incorporating genomic data such as Single-Nucleotide Polymorphisms (SNPs) of Human Sulfatase 1 (SULF1) with a CT radiomic model based on pre-treatment CT images, to predict platinum resistance for ovarian cancer (OC) treatment.

Methods

A cohort of 102 patients with pathologically confirmed OC was retrospectively enrolled into this study from January 2006 to February 2018. All patients had platinum-based chemotherapy after maximal cyto-reductive surgery. This cohort was separated into two groups according to treatment response, i.e., the group with platinum-resistant disease (PR group) and the group with platinum-sensitive disease (PS group). We genotyped 12 SNPs of SULF1 for all OC patients using Mass Array Method. Radiomic features, SNP data and clinicopathological data of the 102 patients were used to build the differentiation models. The study participants were divided into two cohorts: the training cohort (n = 71) and the validation cohort (n = 31). Feature selection and predictive modeling were performed using least absolute shrinkage and selection operator (LASSO), Random Forest Classifier and Support Vector Machine methods. Model performance for predicting platinum resistance was assessed with respect to its calibration, discrimination, and clinical application.

Results

For prediction of platinum resistance, the approach combining the radiomics, clinicopathological data and SNP data demonstrated higher classification efficiency, with an AUC value of 0.993 (95 % CI: 0.83 to 0.98) in the training cohort and 0.967 (95 % CI: 0.83 to 0.98) in validation cohort, than the performance with only the SNPs of SULF1 model (AUC: training, 0.843 [95 %CI: 0.738-0.948]; validation, 0.815 [0.601-1.000]), or with only the radiomic model (AUC: training, 0.874 [95 %CI: 0.789-0.960]; validation, 0.832 [95 %CI: 0.687-0.976]). This integrated approach also showed good calibration and favorable clinical utility.

Conclusions

A predictive model combining pretreatment CT radiomics with genomic data such as SNPs of SULF1 could potentially help to predict platinum resistance in ovarian cancer treatment.

El texto completo de este artículo está disponible en PDF.

Keywords : Radiomics, Radiogenomics, Pharmacogenomics, Platinum-resistance, Ovarian cancer, Human sulfatase 1 (SULF1)


Esquema


© 2020  The Authors. Publicado por Elsevier Masson SAS. Todos los derechos reservados.
Añadir a mi biblioteca Eliminar de mi biblioteca Imprimir
Exportación

    Exportación citas

  • Fichero

  • Contenido

Vol 133

Artículo 111013- janvier 2021 Regresar al número
Artículo precedente Artículo precedente
  • The cardioprotective and anxiolytic effects of Chaihujialonggumuli granule on rats with anxiety after acute myocardial infarction is partly mediated by suppression of CXCR4/NF-κB/GSDMD pathway
  • Jiqiu Hou, Chao Wang, Di Ma, Yali Chen, Huihui Jin, Ying An, Jingyun Jia, Lexi Huang, Haibin Zhao
| Artículo siguiente Artículo siguiente
  • Central deficiency of norepinephrine synthesis and norepinephrinergic neurotransmission contributes to seizure-induced respiratory arrest
  • Yue Shen, Hai Xiang Ma, Han Lu, Hai Ting Zhao, Jian liang Sun, Yuan Cheng, Hong Hai Zhang

Bienvenido a EM-consulte, la referencia de los profesionales de la salud.
El acceso al texto completo de este artículo requiere una suscripción.

Bienvenido a EM-consulte, la referencia de los profesionales de la salud.
La compra de artículos no está disponible en este momento.

¿Ya suscrito a @@106933@@ revista ?

Mi cuenta


Declaración CNIL

EM-CONSULTE.COM se declara a la CNIL, la declaración N º 1286925.

En virtud de la Ley N º 78-17 del 6 de enero de 1978, relativa a las computadoras, archivos y libertades, usted tiene el derecho de oposición (art.26 de la ley), el acceso (art.34 a 38 Ley), y correcta (artículo 36 de la ley) los datos que le conciernen. Por lo tanto, usted puede pedir que se corrija, complementado, clarificado, actualizado o suprimido información sobre usted que son inexactos, incompletos, engañosos, obsoletos o cuya recogida o de conservación o uso está prohibido.
La información personal sobre los visitantes de nuestro sitio, incluyendo su identidad, son confidenciales.
El jefe del sitio en el honor se compromete a respetar la confidencialidad de los requisitos legales aplicables en Francia y no de revelar dicha información a terceros.


Todo el contenido en este sitio: Copyright © 2024 Elsevier, sus licenciantes y colaboradores. Se reservan todos los derechos, incluidos los de minería de texto y datos, entrenamiento de IA y tecnologías similares. Para todo el contenido de acceso abierto, se aplican los términos de licencia de Creative Commons.