grant

A new deep learning approach to probe the molecular basis of inhalation allergens

Organization UNIVERSITY OF TEXAS MED BR GALVESTONLocation GALVESTON, UNITED STATESPosted 1 Jul 2025Deadline 30 Jun 2027
NIHUS FederalResearch GrantFY20253-D3-Dimensional3DAI based modelAI language modelsAI modelAI systemAI technologyAffectAffinityAirAlgorithmsAllergensAllergicAllergic DiseaseAllergic rhinitisAllergic rhinitis due to allergenAllergic rhinosinusitisAllergyAmBAmBisomeAmbrosiaAmphocilAmphotecAmphotercin BAmphotericin BAntibodiesAntigenic DeterminantsArtemisiaArtificial IntelligenceAssayAsthmaAtopic rhinitisB-Cell EpitopesB-Lymphocyte EpitopesBindingBinding DeterminantsBioassayBiological AssayBlood SerumBreathingBronchial AsthmaCessation of lifeCharacteristicsClinicalComplex ExtractsComputational toolkitComputer ReasoningConnectionist ModelsConvNetCross ReactionsCrude ExtractsDataData BasesData SetDatabasesDeathDevelopmentDiseaseDisorderDocumentationDrugsEpitopesExclusionFamilyFungizoneFutureGenesGramineaeGrassesGuidelinesHealthHealth CareHigh-Throughput Nucleotide SequencingHigh-Throughput SequencingHumanIgEImageImmune mediated therapyImmune responseImmunochemical ImmunologicImmunoglobulin EImmunologicImmunologicalImmunologicallyImmunologically Directed TherapyImmunologicsImmunotherapyIncidenceIndividualInhalationInhalingInternationalLevant WormseedMachine IntelligenceMachine LearningMedicationMicroarray AnalysisMicroarray-Based AnalysisModelingModern ManMolecularMolecular ConfigurationMolecular ConformationMolecular InteractionMolecular ProbesMolecular StereochemistryMugwortMysteclin-FNeural Network ModelsNeural Network SimulationPPase-NPathway interactionsPatientsPectate lyasePeptidesPerceptronsPerformancePersonsPharmaceutical PreparationsPoaceaePollenPopulationPrevalenceProtein AnalysisProtein FamilyProteinsRagweedReportingResearchRespiratory AspirationRespiratory InspirationRhinitis allergic atopicRisk FactorsSagebrushSagewortSeasonsSerumSeveritiesSocietiesSourceSource CodeSunflowersSurfaceTechniquesTestingTrainingTransformer language modelUpdateValidationWorld Health OrganizationWormwoodaeroallergensairborn allergenairborne allergenartificial intelligence language modelsartificial intelligence modelartificial intelligence technologyartificial intelligence-based modelcomplex extractcomputational toolboxcomputational toolscomputational toolsetcomputerized toolsconformationconformationalconformational stateconformationallyconformationsconvolutional networkconvolutional neural netsconvolutional neural networkcross reactivitydata basedata to traindataset to traindeep learningdeep learning based modeldeep learning methoddeep learning modeldeep learning strategydesensitizationdesigndesigningdevelopmentaldrug/agentdust miteexperiencefood allergenhost responseimagingimmune system responseimmune therapeutic approachimmune therapeutic interventionsimmune therapeutic regimensimmune therapeutic strategyimmune therapyimmune-based therapiesimmune-based treatmentsimmuno therapyimmunoresponseimprovedinnovative technologiesinspirationlarge data setslarge datasetslarge language modellarge scale language modellinear maplinear transformationmachine based learningmassive scale language modelsmicroarray analysesmicroarray technologymultiomicsmultiple omicsnovelpanomicspathwaypectate transeliminasepolygalacturonate lyasepolygalacturonic acid transeliminaseprogramspyroglyphidsocietal coststhree dimensionaltraining datatree pollentrustworthinessvalidationsweb sitewebsite
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Full Description

ABSTRACT
Inhalation allergy is a major health problem worldwide and is most caused by allergies to grasses, dust mites,

and ragweed. About 45% of the US population is sensitized to one or more allergens from these sources, with

30% of the US population sensitized to ragweed pollen. More than 90% of reactive serum IgE in ragweed-

sensitized patients is against the group 1 allergen, Amb a 1, a non-glycosylated 38-kDa protein that belongs to

the pectate lyase (PL) family. Patients sensitized to ragweed pollen also cross-react to other PL allergens, such

as the mugwort and sunflower allergens, Art v 6 and Hel a 6, respectively. However, it is not known if there are

other PL proteins that could be cross-reacting with these allergens. We hypothesize that artificial intelligence (AI)

technologies that made dramatic improvements in recent years, can clarify this problem. We will use these

innovative technologies to find characteristic sequence and structural features of allergenic PL proteins and

identify new potential PL allergens. As preliminary data, we developed a new convolutional neural network (CNN)

approach, SDAP_AI, which is trained on allergen sequences from our updated Structural Database of Allergenic

Proteins, SDAP 2.0. Our preliminary model achieved a 93.4% accuracy in the test dataset of ten-fold cross-

validation with an 80%/20% partition of training and test data. We also showed a favorable performance of our

CNN model compared to other ML algorithms, such as AllergenFP and Algpred 2. In addition, our SDAP_AI

approach has the potential to clarify what makes a protein allergenic. In the proposed project, we will further

optimize SDAP_AI, assess its robustness by testing the predictions in other independent data sets, and apply

our CNN model to characterize protein allergenicity. We will pursue two aims: 1) optimize a deep learning model,

SDAP_AI, for allergenic proteins using sequence information of allergens in SDAP 2.0 and assess its prediction

quality; and 2) apply SDAP_AI to identify and experimentally validate new potential allergens and IgE epitope

peptides of PL allergens. Potential allergens will be experimentally validated by a peptide microarray assay with

sera from patients sensitized to ragweed pollen. In addition, we also will apply SDAP_AI to reevaluate previously

identified IgE epitopes on PL allergens (e.g., Amb a 1, Jun a 1, Hel a 6) to determine the accuracy of those

epitopes and again validate results by microarray analysis with human sera. We will map linear IgE epitopes on

the surface of PL allergens to define conformational epitopes. This information will help identify common features

that make a protein an allergen and can aid future efforts to predict protein allergenicity. The application of AI

technology to allergen research is novel and our combined experimental and computational approach will yield

a powerful new computational paradigm to identify potential allergenicity of new proteins and help design new

immunotherapies to reduce the burden of inhalation allergies. Source code, documentation for use and example

input files will be available from our SDAP 2.0 website.

Grant Number: 1R21AI193195-01
NIH Institute/Center: NIH

Principal Investigator: WERNER BRAUN

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