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A Visually Apparent and Quantifiable CT Imaging Feature Identifies Biophysical Subtypes of Pancreatic Ductal Adenocarcinoma

Authors :
Michael P. Kim
Eric P. Tamm
Kim A. Reiss
Peter C. Park
Brian P. Hobbs
Shun Yu
Vittorio Cristini
Anil Chauhan
Naveen Garg
Jeffrey E. Lee
Prajnan Das
Deyali Chatterjee
Huaming Yan
Anirban Maitra
Eugene J. Koay
Cullen M. Taniguchi
Huamin Wang
Milind Javle
Yeonju Lee
F. Anthony San Lucas
Ahmed M. Amer
John Lowengrub
Dali Li
Matthew H.G. Katz
Christopher H. Crane
Mauro Ferrari
Gauri R. Varadhachary
Priya Bhosale
Mohamed Zaid
Rong Ye
Newsha Nikzad
Rachna T. Shroff
Ya'an Kang
Robert A. Wolff
Jason B. Fleming
Dalia Elganainy
Mayrim V. Rios Perez
Muayad F. Almahariq
Source :
Clinical Cancer Research. 24:5883-5894
Publication Year :
2018
Publisher :
American Association for Cancer Research (AACR), 2018.

Abstract

Purpose: Pancreatic ductal adenocarcinoma (PDAC) is a heterogeneous disease with variable presentations and natural histories of disease. We hypothesized that different morphologic characteristics of PDAC tumors on diagnostic computed tomography (CT) scans would reflect their underlying biology. Experimental Design: We developed a quantitative method to categorize the PDAC morphology on pretherapy CT scans from multiple datasets of patients with resectable and metastatic disease and correlated these patterns with clinical/pathologic measurements. We modeled macroscopic lesion growth computationally to test the effects of stroma on morphologic patterns, hypothesizing that the balance of proliferation and local migration rates of the cancer cells would determine tumor morphology. Results: In localized and metastatic PDAC, quantifying the change in enhancement on CT scans at the interface between tumor and parenchyma (delta) demonstrated that patients with conspicuous (high-delta) tumors had significantly less stroma, higher likelihood of multiple common pathway mutations, more mesenchymal features, higher likelihood of early distant metastasis, and shorter survival times compared with those with inconspicuous (low-delta) tumors. Pathologic measurements of stromal and mesenchymal features of the tumors supported the mathematical model's underlying theory for PDAC growth. Conclusions: At baseline diagnosis, a visually striking and quantifiable CT imaging feature reflects the molecular and pathological heterogeneity of PDAC, and may be used to stratify patients into distinct subtypes. Moreover, growth patterns of PDAC may be described using physical principles, enabling new insights into diagnosis and treatment of this deadly disease.

Details

ISSN :
15573265 and 10780432
Volume :
24
Database :
OpenAIRE
Journal :
Clinical Cancer Research
Accession number :
edsair.doi.dedup.....442c10782fc8fc16091438fd87ae90c6