<HashMap><database>GEO</database><file_versions><headers><Content-Type>application/xml</Content-Type></headers><body><files><Other>ftp://ftp.ncbi.nlm.nih.gov/geo/series/GSE310nnn/GSE310399/</Other></files><type>primary</type></body><statusCode>OK</statusCode><statusCodeValue>200</statusCodeValue></file_versions><scores/><additional><omics_type>Transcriptomics</omics_type><species>Homo sapiens</species><gds_type> Other</gds_type><gds_type>Expression profiling by high throughput sequencing</gds_type><full_dataset_link>https://www.ncbi.nlm.nih.gov/geo/query/acc.cgi?acc=GSE310399</full_dataset_link><repository>GEO</repository><entry_type>GSE</entry_type></additional><is_claimable>false</is_claimable><name>Sequence and structural determinants of efficacious de novo chimeric antigen receptors</name><description>Advances in generative protein design using artificial intelligence (AI) have enabled the rapid development of binders against heterogeneous targets, including tumor-associated antigens. Despite extensive biochemical characterization, these novel protein binders have had limited evaluation as agents in candidate therapeutics, including chimeric antigen receptor (CAR) T cells. Here, we synthesize variable generative protein design workflows to screen 1,487 novel protein binders targeting BCMA, CD22, and CD19 for efficacy in scalable protein binding and T cell assays. We identify three main challenges that hinder the utility of de novo protein binders as CARs, including tonic signaling, occluded epitope engagement, and off-target activity. We develop computational and experimental heuristics to overcome these limitations, including screens of sequence variants for individual parental structures, that restore on-target CAR activation while mitigating liabilities. Together, our framework accelerates the development of AI-designed proteins for future preclinical therapeutic screening, helping enable a new generation of cellular therapies.</description><dates><publication>2026/07/06</publication></dates><accession>GSE310399</accession><cross_references><GSM>GSM9295444</GSM><GSM>GSM9295445</GSM><GSM>GSM9295448</GSM><GSM>GSM9295449</GSM><GSM>GSM9295446</GSM><GSM>GSM9295447</GSM><GPL>34295</GPL><GSE>310399</GSE><taxon>Homo sapiens</taxon></cross_references></HashMap>