Épisodes

  • Hacking the Triple-Negative Resistance Network (TP53, BRCA1, EGFR) — GaiaLab
    Jan 27 2026

    In this episode, I use GaiaLab (evidence-first biological intelligence) to analyze TP53, BRCA1, and EGFR in triple-negative breast cancer (TNBC) — surfacing prioritized pathways, therapeutic strategies, and testable hypotheses.


    Highlights

    • Top pathway signal: EGFR tyrosine kinase inhibitor (TKI) resistance (p = 1.68e-4)

    • Therapy lanes: EGFR-targeted approaches + PARP inhibitors in BRCA-mutated TNBC

    • Hypotheses to validate: BRCA1–EGFR resistance axis, TP53–metabolism targeting, and a BRCA1+EGFR biomarker panel


    Trust & limits (important)

    • Consensus 52% vs Contention 48%

    • Evidence Density 34% (sparse)

    • Contradiction Index 100% (high) — treat this as hypothesis-generating

    • Research synthesis only — not medical advice


    Slides (PDF)

    https://drive.google.com/file/d/1095BEy5QBoy7B0qLEYZaSe5Qwb_mO7tY/view?usp=sharing


    Next episode:

    I’ll publish the YouTube video version and open submissions where you can send 2–5 genes + a disease context for analysis.


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    14 min
  • From Question to Insights (GaiaLab) — Evidence-First Biological Intelligence
    Jan 24 2026

    GaiaLab is an evidence-first biological intelligence engine that turns a research question (or gene list) into traceable, cross-validated insights—fast.


    In this episode: From Question → Insights

    • How GaiaLab frames a biological question

    • Evidence pulled from curated sources

    • Cross-validation across independent datasets

    • Traceable claims + contradictions flagged

    • Outputs you can replay and reuse

    Watch the video on YouTube: https://www.youtube.com/watch?v=7A0XY-Gf7So
    Try GaiaLab: https://gaialab-production.up.railway.app/

    Notes:

    This content is for research/educational purposes and is not medical advice.


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    16 min