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electricsheepafrica/africa-disability-sao-tome

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Hugging Face2026-04-20 更新2026-04-26 收录
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--- annotations_creators: - no-annotation language_creators: - found language: - en license: other multilinguality: - monolingual size_categories: - 10K<n<100K source_datasets: - original task_categories: - tabular-classification task_ids: [] tags: - africa - humanitarian - hdx - electric-sheep-africa - disability - disease - environment - health - hxl - indicators - malaria - maternity - stp pretty_name: "Sao Tome and Principe - Health Indicators" dataset_info: splits: - name: train num_examples: 14433 - name: test num_examples: 3608 --- # Sao Tome and Principe - Health Indicators **Publisher:** World Health Organization · **Source:** [HDX](https://data.humdata.org/dataset/who-data-for-sao-tome-and-principe) · **License:** `hdx-other` · **Updated:** 2025-02-07 --- ## Abstract This dataset contains data from WHO's [data portal](https://www.who.int/gho/en/) covering the following categories: Air pollution, Antimicrobial resistance (AMR), Assistive technology, Child mortality, Dementia diagnosis, treatment and care, Dementia policy and legislation, Environment and health, Foodborne Diseases Estimates, Global Dementia Observatory (GDO), Global Health Estimates: Life expectancy and leading causes of death and disability, Global Information System on Alcohol and Health, HIV, Health Inequality Monitor, Health financing, Health systems, Health taxes, Health workforce, Hepatitis, Immunization coverage and vaccine-preventable diseases, International Health Regulations (2005) monitoring framework, Malaria, Maternal and reproductive health, Mental health, Neglected tropical diseases, Noncommunicable diseases, Nutrition, Oral Health, Priority health technologies, Resources for Substance Use Disorders, Road Safety, SDG Target 3.8 | Achieve universal health coverage (UHC), Sexually Transmitted Infections, Tobacco control, Tuberculosis, Vaccine-preventable communicable diseases, Violence against women, Violence prevention, Water, sanitation and hygiene (WASH), Women and health, World Health Statistics. For links to individual indicator metadata, see resource descriptions. Each row in this dataset represents first-level administrative unit observations. Data was last updated on HDX on 2025-02-07. Geographic scope: **STP**. *Curated into ML-ready Parquet format by [Electric Sheep Africa](https://huggingface.co/electricsheepafrica).* --- ## Dataset Characteristics | | | |---|---| | **Domain** | Food security and nutrition | | **Unit of observation** | First-level administrative unit observations | | **Rows (total)** | 18,042 | | **Columns** | 19 (6 numeric, 13 categorical, 0 datetime) | | **Train split** | 14,433 rows | | **Test split** | 3,608 rows | | **Geographic scope** | STP | | **Publisher** | World Health Organization | | **HDX last updated** | 2025-02-07 | --- ## Variables **Geographic** — `gho_display` (Number of deaths, Distribution of causes of death among children aged < 5 years (%), Deaths per 1 000 live births), `year_display` (range 1961.0–2030.0), `startyear` (range 1961.0–2030.0), `endyear` (range 1961.0–2030.0), `region_code` (AFR, #region+code) and 4 others. **Outcome / Measurement** — `value`. **Identifier / Metadata** — `gho_code` (MORT_100, MORT_300, MORT_200), `dimension_code` (SEX_BTSX, SEX_FMLE, SEX_MLE), `dimension_name` (Both sexes, Female, Male), `esa_source`, `esa_processed`. **Other** — `gho_url` (https://www.who.int/data/gho/data/indicators/indicator-details/GHO/number-of-deaths, https://www.who.int/data/gho/data/indicators/indicator-details/GHO/gho-ghe-life-tables-by-who-region-global-health-estimates, https://www.who.int/data/gho/data/indicators/indicator-details/GHO/deaths-per-1-000-live-births), `numeric` (range -0.0167–7199386.737), `low` (range -0.1915–4507.9302), `high` (range 0.0–5845.5972). --- ## Quick Start ```python from datasets import load_dataset ds = load_dataset("electricsheepafrica/africa-disability-sao-tome") train = ds["train"].to_pandas() test = ds["test"].to_pandas() print(train.shape) train.head() ``` --- ## Schema | Column | Type | Null % | Range / Sample Values | |---|---|---|---| | `gho_code` | object | 0.0% | MORT_100, MORT_300, MORT_200 | | `gho_display` | object | 0.0% | Number of deaths, Distribution of causes of death among children aged < 5 years (%), Deaths per 1 000 live births | | `gho_url` | object | 0.0% | https://www.who.int/data/gho/data/indicators/indicator-details/GHO/number-of-deaths, https://www.who.int/data/gho/data/indicators/indicator-details/GHO/gho-ghe-life-tables-by-who-region-global-health-estimates, https://www.who.int/data/gho/data/indicators/indicator-details/GHO/deaths-per-1-000-live-births | | `year_display` | float64 | 0.0% | 1961.0 – 2030.0 (mean 2008.3232) | | `startyear` | float64 | 0.0% | 1961.0 – 2030.0 (mean 2008.3197) | | `endyear` | float64 | 0.0% | 1961.0 – 2030.0 (mean 2008.3232) | | `region_code` | object | 0.0% | AFR, #region+code | | `region_display` | object | 0.0% | Africa, #region+name | | `country_code` | object | 0.0% | STP, #country+code | | `country_display` | object | 0.0% | Sao Tome and Principe, #country+name | | `dimension_type` | object | 18.9% | SEX, RESIDENCEAREATYPE, AGEGROUP | | `dimension_code` | object | 18.9% | SEX_BTSX, SEX_FMLE, SEX_MLE | | `dimension_name` | object | 19.0% | Both sexes, Female, Male | | `numeric` | float64 | 9.8% | -0.0167 – 7199386.737 (mean 64097.5004) | | `value` | object | 0.3% | | | `low` | float64 | 46.4% | -0.1915 – 4507.9302 (mean 32.4614) | | `high` | float64 | 46.4% | 0.0 – 5845.5972 (mean 59.1976) | | `esa_source` | object | 0.0% | | | `esa_processed` | object | 0.0% | | --- ## Numeric Summary | Column | Min | Max | Mean | Median | |---|---|---|---|---| | `year_display` | 1961.0 | 2030.0 | 2008.3232 | 2010.0 | | `startyear` | 1961.0 | 2030.0 | 2008.3197 | 2010.0 | | `endyear` | 1961.0 | 2030.0 | 2008.3232 | 2010.0 | | `numeric` | -0.0167 | 7199386.737 | 64097.5004 | 7.8586 | | `low` | -0.1915 | 4507.9302 | 32.4614 | 4.7527 | | `high` | 0.0 | 5845.5972 | 59.1976 | 11.5 | --- ## Curation Raw data was downloaded from HDX via the CKAN API and converted to Parquet. Column names were lowercased and standardised to snake_case. Common missing-value markers (`N/A`, `null`, `none`, `-`, `unknown`, `no data`, `#N/A`) were unified to `NaN`. 297 exact duplicate rows were removed. 6 column(s) were cast from string to numeric or datetime based on parse-success rate (>85% threshold). The dataset was split 80/20 into train and test partitions using a fixed random seed (42) and saved as Snappy-compressed Parquet. --- ## Limitations - Data originates from World Health Organization and has not been independently validated by ESA. - Automated cleaning cannot correct for misreported values, definitional inconsistencies, or sampling bias in the original collection. - The following columns have >20% missing values and should be treated with caution in modelling: `low`, `high`. - Refer to the [original HDX dataset page](https://data.humdata.org/dataset/who-data-for-sao-tome-and-principe) for the publisher's own methodology notes and caveats. --- ## Citation ```bibtex @dataset{hdx_africa_disability_sao_tome, title = {Sao Tome and Principe - Health Indicators}, author = {World Health Organization}, year = {2025}, url = {https://data.humdata.org/dataset/who-data-for-sao-tome-and-principe}, note = {Repackaged for machine learning by Electric Sheep Africa (https://huggingface.co/electricsheepafrica)} } ``` --- *[Electric Sheep Africa](https://huggingface.co/electricsheepafrica) — Africa's ML dataset infrastructure. Lagos, Nigeria.*
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