Cellular Senescence Analysis Agent

AI agent for analyzing cellular senescence in aging research, cancer therapy, and senolytic drug development with signature scoring and SASP profiling.

Sby Skills Guide Bot
Data & AIAdvanced0 views0 installs3/4/2026
Claude CodeCopilot
bioinformaticscellular-agingdrug-discoverytranscriptomicssenescence

name: cellular-senescence-agent description: AI-powered analysis of cellular senescence for aging research, cancer therapy response, and senolytic drug development. license: MIT metadata: author: AI Group version: "1.0.0" created: "2026-01-19" compatibility:

  • system: Python 3.10+ allowed-tools:
  • run_shell_command
  • read_file
  • write_file

Cellular Senescence Agent

The Cellular Senescence Agent provides comprehensive AI-driven analysis of cellular senescence signatures for aging research, cancer biology, and senolytic therapeutic development.

When to Use This Skill

  • When identifying senescent cells in tissue or single-cell data.
  • To analyze senescence-associated secretory phenotype (SASP).
  • For predicting senolytic drug sensitivity.
  • When studying therapy-induced senescence in cancer.
  • To assess senescence burden in aging and disease.

Core Capabilities

  1. Senescence Scoring: Calculate senescence signatures from transcriptomic data.

  2. SASP Profiling: Characterize senescence-associated secretory phenotype composition.

  3. Single-Cell Detection: Identify senescent cells in scRNA-seq data.

  4. Senolytic Prediction: Predict sensitivity to senolytic drugs.

  5. Tissue Aging: Assess senescence burden across tissues.

  6. Cancer Senescence: Analyze therapy-induced senescence.

Senescence Markers

| Category | Markers | Detection | |----------|---------|-----------| | Cell cycle | p16INK4a, p21CIP1, p53 | Expression, IHC | | SA-β-gal | GLB1 (lysosomal) | Activity assay | | SASP | IL-6, IL-8, MMP3, PAI-1 | Expression, secretion | | DNA damage | γH2AX, 53BP1 foci | Immunofluorescence | | Morphology | Enlarged, flattened | Imaging | | Epigenetic | SAHF, SAHMs | Chromatin marks |

Workflow

  1. Input: Bulk or single-cell RNA-seq, proteomics, imaging data.

  2. Signature Scoring: Apply senescence gene signatures.

  3. SASP Analysis: Profile secretory phenotype.

  4. Cell Identification: Flag senescent cells (single-cell).

  5. Senolytic Prediction: Match to drug sensitivity profiles.

  6. Burden Estimation: Quantify senescence load.

  7. Output: Senescence scores, SASP profile, drug recommendations.

Example Usage

User: "Analyze senescence signatures in this aging tissue dataset and identify senolytic candidates."

Agent Action:

python3 Skills/Longevity_Aging/Cellular_Senescence_Agent/senescence_analyzer.py \
    --rnaseq tissue_expression.tsv \
    --singlecell tissue_scrnaseq.h5ad \
    --signatures fridman_sasp,reactome_senescence \
    --senolytic_prediction true \
    --tissue liver \
    --output senescence_report/

Senescence Gene Signatures

| Signature | Genes | Application | |-----------|-------|-------------| | Fridman (2017) | CDKN1A, CDKN2A, SERPINE1... | Pan-senescence | | SenMayo | 125 genes | Tissue senescence | | SASP Core | IL6, IL8, CXCL1, MMP1... | Secretory phenotype | | p16/p21 pathway | CDKN2A, CDKN1A, MDM2... | Cell cycle arrest |

SASP Components

Pro-inflammatory:

  • Interleukins: IL-1α/β, IL-6, IL-8
  • Chemokines: CXCL1, CXCL2, CCL2
  • Growth factors: TGF-β, VEGF

Matrix Remodeling:

  • MMPs: MMP1, MMP3, MMP10
  • Serpins: PAI-1 (SERPINE1)

Effects on Microenvironment:

  • Paracrine senescence spread
  • Immune cell recruitment
  • ECM remodeling
  • Tumor promotion (chronic) vs suppression (acute)

Senolytic Drugs

| Drug | Target | Clinical Status | |------|--------|-----------------| | Dasatinib | Src/tyrosine kinases | Trials (with Q) | | Quercetin | PI3K, serpins | Trials (with D) | | Navitoclax | BCL-2/BCL-xL | Trials | | Fisetin | Multiple | Early trials | | UBX1325 | BCL-xL | Phase 2 (macular) |

AI/ML Components

Senescence Classifier:

  • Multi-gene signature scoring
  • ML classifiers on expression
  • Single-cell senescence probability

Drug Response:

  • GDSC/CCLE senescence sensitivity
  • SASP-drug correlations
  • Synergy predictions

Aging Clock Integration:

  • Epigenetic age correlation
  • Transcriptomic age
  • Senescence-aging relationships

Cancer Applications

Therapy-Induced Senescence (TIS):

  • Chemotherapy, radiation
  • CDK4/6 inhibitors (palbociclib)
  • Dual outcomes: tumor suppression vs SASP-driven recurrence

Senescence + Senolytics:

  • Induce senescence → clear with senolytics
  • "One-two punch" approach
  • Clinical trials ongoing

Prerequisites

  • Python 3.10+
  • Gene signature tools (GSVA, ssGSEA)
  • Single-cell analysis (Scanpy)
  • Drug response databases

Related Skills

  • Single_Cell - For scRNA-seq analysis
  • Cancer_Metabolism_Agent - For metabolic senescence
  • Tumor_Microenvironment - For SASP effects

Research Applications

  1. Aging Research: Quantify senescence burden
  2. Cancer Therapy: Monitor TIS response
  3. Drug Development: Senolytic efficacy
  4. Fibrosis: Senescence in fibrotic disease
  5. Regeneration: Senescence in tissue repair

Author

AI Group - Biomedical AI Platform

Related skills