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--- |
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language: |
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- en |
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tags: |
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- systemic-inflammation |
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- NLR |
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- lymphocytes |
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- CRP |
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- ESR |
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- breast-cancer |
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- sub-saharan-africa |
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license: cc-by-nc-4.0 |
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pretty_name: SSA Breast Systemic Immune Markers Dataset (Women, Multi-ancestry) |
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task_categories: |
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- other |
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size_categories: |
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- 1K<n<10K |
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--- |
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# SSA Breast Systemic Immune Markers Dataset (Women, Multi-ancestry, Synthetic) |
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## Dataset summary |
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This dataset provides a **synthetic cohort of invasive breast cancers** in women across multiple ancestry groups, with emphasis on **sub-Saharan Africa (SSA)** and comparable reference populations. |
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Each tumour is linked to **systemic immune and inflammation markers** derived from complete blood counts and standard laboratory tests: |
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- **Neutrophil-to-lymphocyte ratio (NLR)** – category and continuous value. |
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- **Lymphocyte counts** – category and continuous value (x10⁹/L). |
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- **Neutrophil counts** – continuous value (x10⁹/L) to maintain internal consistency with NLR. |
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- **C-reactive protein (CRP)** – category and continuous value (mg/L). |
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- **Erythrocyte sedimentation rate (ESR)** – category and continuous value (mm/hr). |
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Distributions are qualitatively anchored to global and SSA-focused literature on NLR, lymphopenia, CRP, and ESR in cancer patients, while ensuring that **all records are fully synthetic** and non-identifiable. |
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## Cohort design |
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### Sample size and populations |
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- **Total N**: 10,000 synthetic invasive breast cancers. |
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- **Populations**: |
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- `SSA_West`: 2,000 |
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- `SSA_East`: 2,000 |
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- `SSA_Central`: 1,500 |
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- `SSA_Southern`: 1,500 |
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- `AAW` (African American women): 1,500 |
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- `EUR` (European reference): 1,000 |
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- `EAS` (East Asian reference): 500 |
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- **Sex**: |
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- Predominantly `Female`, with a small fraction of male breast cancers (~1%). |
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- **Age**: |
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- 18–90 years. |
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- Older mean age in EUR/EAS/AAW vs somewhat younger in SSA cohorts, consistent with registry patterns. |
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## Systemic immune markers |
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### Neutrophil-to-lymphocyte ratio (NLR) |
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Variables: |
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- `nlr_category` – `Low`, `Intermediate`, `High`. |
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- `nlr_value` – continuous NLR value. |
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- Derived: `high_nlr` – `True` if `nlr_category == "High"` or `nlr_value ≥ 4.0`. |
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Anchoring: |
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- Meta-analyses in breast cancer identify high NLR (cut-offs ≈3–4) in **~25–40%** of patients, associated with worse outcomes. |
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- In this dataset: |
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- SSA and AAW populations have higher fractions of `High` NLR (~27–31%). |
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- EUR/EAS references have lower `High` NLR (~15%). |
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NLR is constructed from separately sampled neutrophil and lymphocyte counts but constrained to match the target category distribution. |
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### Lymphocyte counts |
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Variables: |
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- `lymphocyte_category` – `Low`, `Normal`, `High`. |
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- `lymphocyte_count_x10e9_per_L` – continuous lymphocyte count. |
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- Derived: `lymphopenia` – `True` if `lymphocyte_category == "Low"` or `lymphocyte_count_x10e9_per_L < 1.0`. |
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Anchoring: |
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- Lymphopenia (low lymphocyte count) is observed in **~15–25%** of oncology patients at diagnosis or during treatment. |
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- SSA and AAW cohorts have slightly **higher `Low` lymphocyte fractions** (~21–24%) than EUR/EAS (~15–16%). |
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Counts are sampled from category-specific distributions in the approximate reference ranges of adult lymphocyte counts. |
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### Neutrophil counts |
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Variable: |
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- `neutrophil_count_x10e9_per_L` – continuous neutrophil count. |
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Anchoring: |
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- Elevated neutrophils occur in approximately **20–30%** of cancer patients with systemic inflammation. |
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- Neutrophil counts are drawn to produce realistic NLR ranges while remaining within plausible haematology intervals. |
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### C-reactive protein (CRP) |
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Variables: |
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- `crp_category` – `Normal`, `Mildly_elevated`, `Markedly_elevated`. |
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- `crp_mg_per_L` – continuous CRP value. |
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Anchoring: |
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- Elevated CRP (>10 mg/L) occurs in **~25–40%** of breast and other cancer patients. |
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- SSA and AAW populations have more `Markedly_elevated` CRP (~26–32%) vs EUR/EAS (~15%). |
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Continuous CRP values are drawn from category-specific distributions, e.g. Normal ~0–5 mg/L, Mildly elevated ~3–20 mg/L, Markedly elevated ~10–200 mg/L. |
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### Erythrocyte sedimentation rate (ESR) |
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Variables: |
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- `esr_category` – `Normal`, `Mildly_elevated`, `Markedly_elevated`. |
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- `esr_mm_per_hr` – continuous ESR value. |
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Anchoring: |
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- High ESR (>40–50 mm/hr) is reported in **~25–40%** of oncology patients. |
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- SSA and AAW cohorts are modeled with higher `Markedly_elevated` ESR fractions (≈26–31%) vs EUR/EAS (~15%). |
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ESR values are generated using category-specific distributions spanning normal (~0–25 mm/hr), mildly elevated (~15–60 mm/hr), and markedly elevated (~30–120 mm/hr) ranges. |
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### Composite inflammatory burden |
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Variable: |
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- `high_inflammatory_burden` – `True` if **any** of the following holds: |
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- `high_nlr` is `True`. |
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- `crp_category == "Markedly_elevated"`. |
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- `esr_category == "Markedly_elevated"`. |
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This flag approximates a **high systemic inflammatory state** for risk stratification and modeling. |
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## File and schema |
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### `systemic_immune_markers_data.parquet` / `systemic_immune_markers_data.csv` |
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Each row represents a synthetic breast cancer case with demographics and systemic markers: |
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- **Demographics** |
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- `sample_id` |
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- `population` |
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- `region` |
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- `is_SSA` |
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- `is_reference_panel` |
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- `sex` |
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- `age` |
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- **NLR and counts** |
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- `nlr_category`, `nlr_value`, `high_nlr` |
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- `lymphocyte_category`, `lymphocyte_count_x10e9_per_L`, `lymphopenia` |
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- `neutrophil_count_x10e9_per_L` |
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- **CRP and ESR** |
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- `crp_category`, `crp_mg_per_L` |
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- `esr_category`, `esr_mm_per_hr` |
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- **Composite marker** |
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- `high_inflammatory_burden` |
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## Generation |
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The dataset is generated using: |
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- `systemic_immune_markers/scripts/generate_systemic_immune_markers.py` |
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with configuration in: |
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- `systemic_immune_markers/configs/systemic_immune_markers_config.yaml` |
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and literature inventory in: |
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- `systemic_immune_markers/docs/LITERATURE_INVENTORY.csv` |
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Key steps: |
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1. **Cohort sampling** – multi-ancestry invasive breast cancer cohort with age/sex by population. |
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2. **Lymphocyte assignment** – sample `lymphocyte_category` by population and draw continuous counts. |
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3. **NLR assignment** – sample `nlr_category` by population; draw neutrophil counts and compute `nlr_value` consistent with the category. |
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4. **CRP and ESR assignment** – sample categories by population and generate continuous values within plausible clinical ranges. |
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5. **Derived flags** – compute `high_nlr`, `lymphopenia`, and `high_inflammatory_burden`. |
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## Validation |
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Validation is performed with: |
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- `systemic_immune_markers/scripts/validate_systemic_immune_markers.py` |
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and summarized in: |
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- `systemic_immune_markers/output/validation_report.md` |
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Checks include: |
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- **C01–C02** – Sample size and population counts vs config. |
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- **C03** – NLR category distributions by population. |
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- **C04** – Lymphocyte category distributions by population. |
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- **C05** – CRP category distributions by population. |
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- **C06** – ESR category distributions by population. |
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- **C07** – Missingness across demographics, NLR/lymphocytes, CRP/ESR, and composite flags. |
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The released version is configured to stay within a **10% absolute deviation tolerance** for categorical distributions, with an **overall validation status of `PASS`**. |
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## Intended use |
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This dataset is intended for: |
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- **Risk stratification and prognostic modeling** using systemic inflammatory markers. |
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- **Integration** with other Electric Sheep Africa synthetic modules (pathology, IHC, immune profiles, comorbidities, environmental exposures) to build multi-modal models. |
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- **Educational use** for teaching relationships between NLR, lymphocyte counts, CRP/ESR, and cancer outcomes across ancestries. |
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It is **not intended** for: |
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- Estimating true prevalence of high NLR or elevated CRP/ESR in any specific population. |
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- Direct clinical decision-making or triage. |
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## Ethical considerations |
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- No real patient data are used; all cohorts and markers are simulated. |
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- Differences in systemic inflammation between populations reflect literature-informed trends and must not be used to stigmatize or essentialize groups. |
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- Users should interpret modeled patterns alongside high-quality epidemiological data and local clinical context. |
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## License |
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- License: **CC BY-NC 4.0**. |
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- Free for non-commercial research, method development, and education with attribution. |
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## Citation |
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If you use this dataset, please cite: |
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> Electric Sheep Africa. "SSA Breast Systemic Immune Markers Dataset (Women, Multi-ancestry, Synthetic)." Hugging Face Datasets. |
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and, as appropriate, key literature on NLR, lymphocyte counts, CRP, and ESR in breast cancer and other solid tumours, including studies from Sub-Saharan Africa. |
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