Screen.
Non-invasive, affordable and scalable methods to expand cancer screening globally.
Two clinical dashboards and a molecular-twin platform span the journey: detecting cancer early, monitoring treatment response, and surveilling risk across a patient's lifetime.
DiNanoTwin reads dynamic host-response signals from a routine blood draw and models how they change over time, supporting clinicians across the cancer journey.
Our models are being developed to prioritise reproducibility, interpretability and clinical usability, producing not just a classification but clinician-facing molecular insight (confidence scores, feature-level explanations, longitudinal change and similarity to clinically relevant patient subgroups).
Surfacing cancer-associated biology before symptoms, from a standard blood draw.
Longitudinal monitoring for high-risk adults, tracking molecular change over time.
Detecting drug resistance and relapse biology at baseline, six weeks and six months.
Molecular oncology intelligence, from sequence to signed report: one API.
DYSPLAI packages the entire molecular research workflow (analysis, cohort statistics, explainable evidence, reporting and more) into a single, secure, multi-tenant product that research teams can deploy instead of build.
DYSPLAI spans 17 cancer types in a single molecular reference atlas, giving every sample instant biological context: nearest neighbours, representativeness, and out-of-distribution flags as standard.
Its cross-domain engine unlocks the archive: analyse historic biobank specimens alongside fresh material, and issue callbacks that re-surface stored cohorts as the atlas grows. And because it positions each profile in survival-associated molecular space, DYSPLAI makes exceptional responders and non-responders discoverable and directly comparable, turning outlier biology into a research hypothesis you can explore.
Molecular context, on demand.
Purpose-built, independently scalable services behind a single authenticated gateway (from raw sequence to a signed, reproducible report).
Asynchronous, QC-gated processing of molecular inputs, returning a sample's position in the reference atlas with per-sample provenance.
Summarise, compare and neighbour-search across analyses, with guards that only truly comparable samples are pooled.
Prediction-grounded structured evidence and an interactive molecular-network view. Transparency, not a black box.
Synthesises findings into readable, cited narrative, with guardrails that refuse diagnostic, prognostic or treatment-intent queries.
Publication-quality PDF and JSON reports with executive summaries and reproducible provenance.
A growing portfolio of research services, all behind the same authenticated gateway.
DYSPLAI's molecular evidence graph grounds each result in the biology behind it: it links the prediction to supporting and contradicting pathway activity, gene expression, and the post-transcriptional layer other atlases skip (circRNA back-splice junctions, alternative-splice events and RNA modifications), each backed by public reference priors and the nearest atlas neighbours.
Because it surfaces contradicting evidence too, you see how well-supported a call is: coverage, direction and priors, never a black-box number.
Explainable by construction: pathways, gene expression, circRNA junctions, splice events, RNA edits and clinical metrics, fused into one navigable evidence graph per sample.
The representation is decomposed into three axes (host-immune response, tumour atlas, and pharmacology), each auditable on its own held-out split.
Internal held-out (validation) split; condition probabilities are well-calibrated (Brier ≈ 0.03–0.05).
A research tool for local molecular sensitivity: it explores how a profile moves toward a survival-associated neighbourhood, phrased as "locally associated with," never as an intervention.
Every response ships a validity_panel and conservative perturbation bounds, so you always see how far to trust the result, or when not to.
Every query, artefact and result is scoped to its owner and namespaced against identifier-guessing (IDOR). Cross-tenant access is explicitly tested and denied.
Inference runs on memory-encrypted GKE Confidential Compute: molecular data is encrypted in use, not only at rest and in transit. A bring-your-own-environment tier keeps compute and data entirely inside your own estate.
No fabricated data, ever. QC failures, low-confidence estimates and out-of-distribution samples are surfaced honestly, not hidden.
Available via Google Cloud Marketplace with tiered, usage-based billing; procurement-ready through existing cloud agreements.
Results from as little as ~£4 per usage credit; end-to-end sample characterisation for as little as £80.
Research Use Only. Not for use in diagnostic procedures. DYSPLAI is not a diagnostic, treatment-recommendation or clinical-decision-support system, and is not an EHR or LIMS. The ruo_disclaimer field is non-suppressible on every response containing molecular, cohort, counterfactual, interpretation or report data. Customers must de-identify data before submission.
Our clinical programme runs 2025 to 2027 across two linked arms: CCANED, a population-scale early-detection cohort, and CIPHER, a treatment-monitoring backbone. Delivered through a global network of partners across several countries, to generate diverse and longitudinal data, turning single snapshots into molecular trajectories.
Every timepoint feeds a continuously learning molecular twin of each participant's cancer biology, powering the platform's next generation: DiNanoQ for earlier detection and DiNanoTrack for surveillance and monitoring. As the cohort grows, the twins sharpen and the evidence behind both compounds.
Explore the study on ClinicalTrials.gov ↗
A population-scale early-detection cohort generating the validation data behind DiNanoQ for non-invasive cancer detection.
A focused monitoring cohort that anchors a named molecular digital-twin programme in NSCLC, reading treatment response at baseline, six weeks and six months to surface drug resistance and relapse biology.
Send a speculative CV over to careers@dysplasiadx.com if you're looking for a new challenge and a chance to be a part of our efforts to beat cancer.
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