grant

A Novel Framework for Sensitive and Reliable Early Diagnosis, Topographic Mapping, and Stiffness Classification of Colorectal Cancer Polyps

Organization UNIVERSITY OF TEXAS AT AUSTINLocation AUSTIN, UNITED STATESPosted 20 Jul 2023Deadline 30 Jun 2026
NIHUS FederalResearch GrantFY20243-D3-D Images3-D image3-Dimensional3D3D image3D images4-D imaging4D ImagingAbscissionAddressAlgorithmsAnatomic SitesAnatomic structuresAnatomyAreaBiopsyCancer CauseCancer CenterCancer EtiologyCessation of lifeCharacteristicsClassificationClinicalColonColonoscopyColorectal CancerColorectal NeoplasmsColorectal TumorsComputer Vision SystemsConfusionConfusional StateDeathDetectionDevelopmentDevicesDiagnosisEarly DiagnosisElasticityEndoscopesEnsureEvaluationExcisionExtirpationFeedbackGI PolypGI cancersGI malignanciesGI tract cancersGastrointestinal CancerGastrointestinal PolypGastrointestinal Tract CancerGeometryGoalsImageIncidenceIntuitionLarge Bowel TumorLarge Intestine NeoplasmLarge Intestine TumorMachine LearningMalignant Gastrointestinal NeoplasmMalignant neoplasm of gastrointestinal tractMapsMedicalMental ConfusionModulusMorphologyOperative ProceduresOperative Surgical ProceduresOutputPerformancePolypsPrecancerous PolypProceduresQualitative EvaluationsQuantitative EvaluationsRadiationRadiation therapyRadiotherapeuticsRadiotherapyRemovalResectedResolutionReview LiteratureRoboticsShapesSightSurfaceSurgeonSurgicalSurgical InterventionsSurgical ProcedureSurgical RemovalSystemSystematicsT-StageTactileTechnologyTestingTextureThree-Dimensional ImageTimeTreatment outcomeTumor stageVisionVisualbiocompatibilitybiomaterial compatibilitycancer typechemotherapyclinical diagnosiscolon cancer patientscolorectal cancer patientscolorectal neoplasiacomputer visiondesigndesigningdevelopmentaldiagnostic platformdiagnostic systemearly detectionexperimentexperimental researchexperimental studyexperimentsfabricationfour-dimensional imaginggastrointestinal malignanciesimagingimprovedin vivoinnovateinnovationinnovativeintelligent algorithmintuitivelarge bowel neoplasmmachine based learningmachine learned algorithmmachine learning algorithmmachine learning based algorithmmicroscope imagingmicroscopic imagingmicroscopy imagingmortalitynovelpre-clinical evaluationpreclinical evaluationradiation treatmentresectionresolutionsresponsescreeningscreeningssensing technologysensor technologysensor-based technologysmart algorithmsurgerysurvival outcometherapeutic stratificationthree dimensionaltimelinetreatment stratificationtreatment with radiationtumorvisual function
Sign up free to applyApply link · pipeline · email alerts
— or —

Get email alerts for similar roles

Weekly digest · no password needed · unsubscribe any time

Full Description

Summary/Abstract:
Our long-term goal is to develop a novel soft robotic endoscope with intelligent tactile sensing balloons and

complementary machine learning (ML) and computer vision (CV) algorithms to enhance early-stage detection,

accurate tumor localization, and treatment stratification of various gastrointestinal (GI) cancers. This robotic

framework provides clinicians with (i) a safe and intuitively-steerable soft robotic endoscope to perform precise

diagnosis, biopsy, and surgical procedures; (ii) in vivo high-fidelity visual, textural, and stiffness information of

the diagnosed anatomy; (iii) in vivo radiation-free quantified topographic mapping and morphological

characterization (i.e., shape and texture) of GI polyps using CV algorithms; (iv) intelligent real-time in vivo

classification of type and stiffness of detected polyps using ML algorithms; and more importantly (v) quantitative

evaluations of tumor response during chemo- and radiation-therapy period via in vivo topographic/stiffness

mapping. Considering the 2-year timeline of this collaborative project, in this proposal, we will mainly

focus on the design, development, and thorough evaluation of a novel and soft Vision-based Tactile

Sensing Balloon (VTSB) with complementary Computer Vision (CV) and Machine Learning (ML)

algorithms to perform high-resolution in vivo topographic mapping and stiffness classification of

Colorectal Cancer (CRC) polyps.

CRC is the leading cause of cancer incidence and mortality worldwide. In 2020, CRC accounted for 1.9 million

new cases (i.e., #3 cancer type in ranking) and 935,000 new deaths (i.e., #2 cancer type in ranking). Since

survival outcomes differ significantly based on the tumor stage at the time of detection, early detection via

colonoscopy has a significant impact on treatment outcomes. Morphological characteristics (i.e., shape and

texture) and change in the modulus of elasticity of CRC polyps are well-known to be associated with tumor type

and stage. Colonoscopic procedures, therefore, are of paramount importance as they can help in early detection

and removal of pre-cancerous polyps. However, state-of-the-art traditional colonoscopic procedures still solely

rely on visual 2D/3D images and cannot yet provide the clinicians with in vivo detailed textural and stiffness

feedback. These limitations has caused high polyp miss rate (about 20%-30%) as well as heavily subjective and

evaluator-dependent tumor identification and classifications.

It is our central hypothesis that utilizing the proposed VTSB with complementary ML and CV algorithms, can

collectively address the limitations of the state-of-the-art colonoscopic technologies by (1) readily integrating with

the existing colonoscopic systems and not changing the current clinical diagnosis workflow, (2) providing high-

resolution 4D imaging (3D texture mapping + stiffness classification), (3) decreasing polyp miss-rate, and (4)

enhancing in vivo polyps’ type and stage classification. The proposed contribution is significant, high impact, and

innovative and our goal is to demonstrate that it can significantly improve the current diagnosis procedures and

shift the current clinical paradigm.

Grant Number: 5R21CA280747-02
NIH Institute/Center: NIH

Principal Investigator: Farshid Alambeigi

Sign up free to get the apply link, save to pipeline, and set email alerts.

Sign up free →

Agency Plan

7-day free trial

Unlock procurement & grants

Upgrade to access active tenders from World Bank, UNDP, ADB and more — with email alerts and pipeline tracking.

$29.99 / month

  • 🔔Email alerts for new matching tenders
  • 🗂️Track tenders in your pipeline
  • 💰Filter by contract value
  • 📥Export results to CSV
  • 📌Save searches with one click
Start 7-day free trial →