Computational modeling of pancreatic cancer patients receiving FOLFIRINOX and gemcitabine-based therapies identifies optimum intervention strategies.
Kimiyo N YamamotoAkira NakamuraLin L LiuShayna SteinAngela C TramontanoUri KartounTetsunosuke ShimizuYoshihiro InoueMitsuhiro AsakumaHiroshi HaenoChung Yin KongKazuhisa UchiyamaMithat GonenChin HurFranziska MichorPublished in: PloS one (2019)
Pancreatic ductal adenocarcinoma (PDAC) exhibits a variety of phenotypes with regard to disease progression and treatment response. This variability complicates clinical decision-making despite the improvement of survival due to the recent introduction of FOLFIRINOX (FFX) and nab-paclitaxel. Questions remain as to the timing and sequence of therapies and the role of radiotherapy for unresectable PDAC. Here we developed a computational analysis platform to investigate the dynamics of growth, metastasis and treatment response to FFX, gemcitabine (GEM), and GEM+nab-paclitaxel. Our approach was informed using data of 1,089 patients treated at the Massachusetts General Hospital and validated using an independent cohort from Osaka Medical College. Our framework establishes a logistic growth pattern of PDAC and defines the Local Advancement Index (LAI), which determines the eventual primary tumor size and predicts the number of metastases. We found that a smaller LAI leads to a larger metastatic burden. Furthermore, our analyses ascertain that i) radiotherapy after induction chemotherapy improves survival in cases receiving induction FFX or with larger LAI, ii) neoadjuvant chemotherapy improves survival in cases with resectable PDAC, and iii) temporary cessations of chemotherapies do not impact overall survival, which supports the feasibility of treatment holidays for patients with FFX-associated adverse effects. Our findings inform clinical decision-making for PDAC patients and allow for the rational design of clinical strategies using FFX, GEM, GEM+nab-paclitaxel, neoadjuvant chemotherapy, and radiation.
Keyphrases
- locally advanced
- neoadjuvant chemotherapy
- rectal cancer
- squamous cell carcinoma
- radiation therapy
- decision making
- sentinel lymph node
- end stage renal disease
- healthcare
- free survival
- advanced non small cell lung cancer
- small cell lung cancer
- randomized controlled trial
- chronic kidney disease
- newly diagnosed
- ejection fraction
- peritoneal dialysis
- machine learning
- high throughput
- lymph node
- gene expression
- tyrosine kinase
- radiation induced
- single cell
- chemotherapy induced
- combination therapy