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Comparative genomic profiling of Sezary syndrome and primary cutaneous CD8+ aggressive epidermotropic cytotoxic T-cell lymphoma

Comparative genomic profiling of Sezary syndrome and primary cutaneous CD8+ aggressive epidermotropi…
Photo by CDC / Unsplash
Key Takeaway
Note that this observational genomic analysis shows associations, not causation, for subtype-specific mutations in cutaneous T-cell lymphomas.

This was a secondary analysis of publicly available genomic datasets from the Columbia University CTCL cohort, focusing on patients with Sezary syndrome (n=26) or primary cutaneous CD8+ aggressive epidermotropic cytotoxic T-cell lymphoma (PCAECTCL; n=13). The study used a conversational AI framework for comparative pathway-level profiling between the two lymphoma subtypes.

The primary outcome was pathway-level mutation frequencies and tumor mutational burden. Tumor mutational burden was comparable between Sezary syndrome and PCAECTCL (p = 0.96). A key secondary finding was that ERBB2 mutations were significantly enriched between the subtypes (p = 0.031), though the direction of enrichment was not specified in the absolute numbers.

No safety or tolerability data were reported, as this was a genomic analysis without clinical intervention. The study was limited by its secondary analysis of existing data, a limited sample size, and the absence of reported clinical outcomes. Follow-up duration was not reported.

The practice relevance is that this analysis generates testable hypotheses for subtype-specific therapeutic targeting. However, as an observational study, findings show associations, not causation. Results are based on genomic data analysis, and clinical relevance requires further validation. Clinicians should not infer clinical efficacy from pathway findings or recommend specific therapies based on this study.

Study Details

Study typeCohort
Sample sizen = 26
EvidenceLevel 3
PublishedApr 2026
View Original Abstract ↓
Background: Sezary syndrome (SS) is an aggressive leukemic variant of cutaneous T-cell lymphoma (CTCL) with distinct clinical and biological features compared to rarer entities such as primary cutaneous CD8+ aggressive epidermotropic cytotoxic T-cell lymphoma (PCAECTCL). Although recurrent genomic alterations in CTCL have been described, comparative analyses at the pathway level across biologically divergent subtypes remain limited. Here, we leveraged a conversational artificial intelligence (AI) platform for precision oncology to enable rapid, integrative, and hypothesis-driven interrogation of publicly available genomic datasets. Methods: We conducted a secondary analysis of somatic mutation and clinical data from the Columbia University CTCL cohort accessed via cBioPortal. Cases were stratified into SS (n=26) and PCAECTCL (n=13). High-confidence coding variants were curated and mapped to biologically relevant signaling pathways and functional gene categories implicated in CTCL pathogenesis. Pathway-level mutation frequencies were compared using Chi-square or Fisher's exact tests, with effect sizes quantified as odds ratios. Tumor mutational burden (TMB) was compared using the Wilcoxon rank-sum test. Subtype-specific co-mutation patterns were evaluated using pairwise association analyses and visualized through oncoplots and network heatmaps. Conversational AI agents, AI-HOPE, were used to iteratively refine cohort definitions, prioritize pathway-level signals, and contextualize findings. Results: TMB was comparable between SS and PCAECTCL (p = 0.96), indicating no significant difference in global mutational load. In contrast, pathway-centric analyses revealed marked qualitative differences. SS demonstrated enrichment of alterations in epigenetic regulators, tumor suppressor and cell-cycle control pathways, NFAT signaling, and DNA damage response mechanisms, consistent with transcriptional dysregulation and immune modulation. PCAECTCL exhibited relatively higher frequencies of alterations involving epigenetic regulators and MAPK pathway signaling, suggesting distinct oncogenic dependencies. Co-mutation analysis revealed a more constrained and focused interaction landscape in SS, whereas PCAECTCL displayed broader and more heterogeneous co-mutation networks, indicative of divergent evolutionary trajectories. Notably, ERBB2 mutations were significantly enriched between subtypes (p = 0.031), highlighting a potential subtype-specific therapeutic vulnerability. Conclusions: This study demonstrates that SS is distinguished from PCAECTCL not by increased mutational burden but by distinct pathway-level architectures, particularly involving epigenetic regulation, immune signaling, and transcriptional control. These findings generate biologically grounded, testable hypotheses for subtype-specific therapeutic targeting and underscore the value of conversational AI as a scalable framework for accelerating discovery in translational cancer genomics.
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