Gene expression profiling of pancreatic ductal adenocarcinomas in response to neoadjuvant chemotherapy

Author:

Sahni Sumit123ORCID,Nahm Christopher4,Ahadi Mahsa S.125,Sioson Loretta125,Byeon Sooin12,Chou Angela125,Maloney Sarah12,Moon Elizabeth12,Pavlakis Nick1267,Gill Anthony J.125,Samra Jaswinder1238,Mittal Anubhav12389

Affiliation:

1. Northern Clinical School, Faculty of Medicine and Health University of Sydney St Leonards New South Wales Australia

2. Northern Clinical School, Kolling Institute of Medical Research University of Sydney St Leonards New South Wales Australia

3. Australian Pancreatic Centre Sydney New South Wales Australia

4. Western Clinical School, Faculty of Medicine and Health University of Sydney St Leonards New South Wales Australia

5. Department of Anatomical Pathology, NSW Health Pathology Royal North Shore Hospital Sydney New South Wales Australia

6. Northern Sydney Cancer Center, Royal North Shore Hospital St Leonards New South Wales Australia

7. Northern Cancer Institute St Leonards New South Wales Australia

8. Upper Gastrointestinal Surgical Unit Royal North Shore Hospital and North Shore Private Hospital St Leonards New South Wales Australia

9. The University of Notre Dame Australia Sydney New South Wales Australia

Abstract

AbstractAimPancreatic ductal adenocarcinoma (PDAC) has the lowest survival rate of all major cancers. Chemotherapy is the mainstay systemic therapy for PDAC, and chemoresistance is a major clinical problem leading to therapeutic failure. This study aimed to identify key differences in gene expression profile in tumors from chemoresponsive and chemoresistant patients.MethodsArchived formalin‐fixed paraffin‐embedded tumor tissue samples from patients treated with neoadjuvant chemotherapy were obtained during surgical resection. Specimens were macrodissected and gene expression analysis was performed. Multi‐ and univariate statistical analysis was performed to identify differential gene expression profile of tumors from good (0%–30% residual viable tumor [RVT]) and poor (>30% RVT) chemotherapy‐responders.ResultsInitially, unsupervised multivariate modeling was performed by principal component analysis, which demonstrated a distinct gene expression profile between good‐ and poor‐chemotherapy responders. There were 396 genes that were significantly (p < 0.05) downregulated (200 genes) or upregulated (196 genes) in tumors from good responders compared to poor responders. Further supervised multivariate analysis of significant genes by partial least square (PLS) demonstrated a highly distinct gene expression profile between good‐ and poor responders. A gene biomarker of panel (IL18, SPA17, CD58, PTTG1, MTBP, ABL1, SFRP1, CHRDL1, IGF1, and CFD) was selected based on PLS model, and univariate regression analysis of individual genes was performed. The identified biomarker panel demonstrated a very high ability to diagnose good‐responding PDAC patients (AUROC: 0.977, sensitivity: 82.4%; specificity: 87.0%).ConclusionA distinct tumor biological profile between PDAC patients who either respond or not respond to chemotherapy was identified.

Publisher

Wiley

Subject

Cancer Research,Radiology, Nuclear Medicine and imaging,Oncology

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