A comprehensive dataset of environmentally contaminated sites in the state of São Paulo in Brazil.
Nouha SamlaniDaphne Silva PinoReginaldo BertoloTannaz PakPublished in: Scientific data (2024)
In the Brazilian state of São Paulo, contaminated sites (CSs) constitute threats to health, environment and socioeconomic situation of populations. Over the past two decades, the Environmental Agency of São Paulo (CETESB) has monitored these known CSs. This paper discusses the produced dataset through digitising the CETESB reports and making them accessible to the public in English. The dataset reports on qualitative aspects of contamination within the registered sites (e.g., contamination type and spread) and their management status. The data was extracted from CETESB reports using a machine-learning computer vision algorithm. It comprises two components: an optical character recognition (OCR) engine for text extraction and a convolutional neural network (CNN) image classifier to identify checked boxes. The digitisation was followed by harmonisation and quality assurance processes to ensure the consistency and validity of the data. Making this dataset accessible will allow future work on predictive analysis and decision-making and will inform the required policy-making to improve the management of the CSs in Brazil.
Keyphrases
- deep learning
- convolutional neural network
- machine learning
- drinking water
- healthcare
- adverse drug
- big data
- heavy metals
- artificial intelligence
- human health
- mental health
- public health
- electronic health record
- risk assessment
- decision making
- health risk
- systematic review
- smoking cessation
- emergency department
- data analysis
- social media