Headandnecksquamouscarcinomasaffectallethnicitiesandagegroups, accountingforsignificant mortality and therapyrelated sideeffects. Over 50,000 new cases are diagnosed each year in the UnitedStates,leadingtolarge,richrepositoriesofpatientdata.Foreachofthesecases,oncologists needtoanticipatesurvival,oncologic,andsideeffectoutcomesassociatedwithtreatmentstrategiesin ordertoselectatreatmentwhichbalancesefficacyandtoxicity.However,despitethewealthofdata available,riskpredictionalgorithmsforcancersarerudimentaryandincorporateonlyahandfulof patientcharacteristics,largelyduetoalackofcomputationalmethodologies. We propose to develop a computational methodology that supports the construction of a validated precision model of patientspecific outcomes for head and neck cancers, based on demographics,toxicity,andcompleximagingdata.Ourensemblemethodologywillberevolutionaryin that it will be the first in the field to include both imaging and nonimaging data, while taking into accountlargescalebiologicalandclinicalcorrelates.Theapproachisinnovativethroughitsleverageof big data repositories and through its unique blend of computational modeling principles from bioengineering,statistics,andcomputerscience.Thesemethodsallowustoincorporatediversedata types,handlemissingdata,andmodelmultipleoutcomes. Fromaclinicalperspective,thisintegrativeapproachisnovelinthefieldofcancertherapy.The resultingmodelandwebbasedenvironmentwillmarkasignificantadvanceinbiomedicalcomputing becauseitwillbeabletoidentify,forthefirsttime,specificsubgroupswhoareatriskfordistinct oncologic,toxicity,andsurvivalprofiles.Furthermore,the?currentclinicalpracticeparadigmforhead andnecktreatmentisstagedriven.Withvalidation,thisnovelapproachcanidentifypatientsbasednot on clinical staging, but on precision modeling using cohort data and similar sets of patients. The methodologyisapplicabletoclinicalpracticeinvolvinghumansubjectsandhasthepotentialtochange thestandardofcareandoutcomesoftreatmentinthefield.

Public Health Relevance

Over50,000newcasesofheadandneckcancersarediagnosedeachyearintheUnitedStates,leading tolarge,richrepositoriesofpatientdata.Thisprojectdevelopsthecomputationalmethodologyneeded to transform these repositories into precise models which can predict patientspecific responses to cancertherapy.Theprojectwillleadtobetterinsightsintothebiological,therapeuticanddemographic factorsrelatedtocancersurvivalandtoxicity,allowingpersonalizationofcareattheindividuallevel, andlargescaleprecisionmedicinebasedonquantitativerisk.

Agency
National Institute of Health (NIH)
Institute
National Cancer Institute (NCI)
Type
Research Project (R01)
Project #
5R01CA214825-03
Application #
9645039
Study Section
Biomedical Computing and Health Informatics Study Section (BCHI)
Program Officer
Ossandon, Miguel
Project Start
2017-03-03
Project End
2021-02-28
Budget Start
2019-03-01
Budget End
2021-02-28
Support Year
3
Fiscal Year
2019
Total Cost
Indirect Cost
Name
University of Illinois at Chicago
Department
Biostatistics & Other Math Sci
Type
Biomed Engr/Col Engr/Engr Sta
DUNS #
098987217
City
Chicago
State
IL
Country
United States
Zip Code
60612
Pinnix, Chelsea C; Ng, Andrea K; Dabaja, Bouthaina S et al. (2018) Positron emission tomography-computed tomography predictors of progression after DA-R-EPOCH for PMBCL. Blood Adv 2:1334-1343
Kamal, Mona; Ng, Sweet Ping; Eraj, Salman A et al. (2018) Three-dimensional imaging assessment of anatomic invasion and volumetric considerations for chemo/radiotherapy-based laryngeal preservation in T3 larynx cancer. Oral Oncol 79:1-8
Grossberg, Aaron J; Mohamed, Abdallah S R; Elhalawani, Hesham et al. (2018) Imaging and clinical data archive for head and neck squamous cell carcinoma patients treated with radiotherapy. Sci Data 5:180173
Marai, G Elisabeta; Ma, Chihua; Burks, Andrew et al. (2018) Precision Risk Analysis of Cancer Therapy with Interactive Nomograms and Survival Plots. IEEE Trans Vis Comput Graph :
Multidisciplinary Larynx Cancer Working Group; Mulcahy, Collin F; Mohamed, Abdallah S R et al. (2018) Age-adjusted comorbidity and survival in locally advanced laryngeal cancer. Head Neck 40:2060-2069
Koch, Brandon; Vock, David M; Wolfson, Julian (2018) Covariate selection with group lasso and doubly robust estimation of causal effects. Biometrics 74:8-17
Kamal, Mona; Mohamed, Abdallah S R; Volpe, Stefania et al. (2018) Radiotherapy dose-volume parameters predict videofluoroscopy-detected dysphagia per DIGEST after IMRT for oropharyngeal cancer: Results of a prospective registry. Radiother Oncol 128:442-451
Ger, Rachel B; Yang, Jinzhong; Ding, Yao et al. (2018) Synthetic head and neck and phantom images for determining deformable image registration accuracy in magnetic resonance imaging. Med Phys :
López Alfonso, Juan Carlos; Parsai, Shireen; Joshi, Nikhil et al. (2018) Temporally feathered intensity-modulated radiation therapy: A planning technique to reduce normal tissue toxicity. Med Phys 45:3466-3474
Elhalawani, Hesham; Lin, Timothy A; Volpe, Stefania et al. (2018) Machine Learning Applications in Head and Neck Radiation Oncology: Lessons From Open-Source Radiomics Challenges. Front Oncol 8:294

Showing the most recent 10 out of 31 publications