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A premier medical diagnostics company.
Healthcare
A leading medical diagnostics company sought to enhance its data processing capabilities by automating information extraction from lab reports. The objective was to streamline the extraction of personal details, test information, and handwritten data present in various formats within these reports. We implemented an AI-based data extraction solution that leverages optical character recognition (OCR), computer vision, and Natural Language Processing (NLP) to identify and extract relevant data points from different types of documents. The extracted data can be downloaded or pushed to third-party applications, thus speeding up the processing of those documents.
The client faced challenges with inefficient manual data entry from diverse lab reports, resulting in inaccuracies and resource-intensive processes. Handling variability in report formats, accurately extracting handwritten data, and customizing solutions across domains were major pain points.
The solution leveraged image processing and optical character recognition (OCR) to efficiently extract data from scanned PDF lab reports, overcoming limitations encountered by traditional parsing mechanisms. Its scalable architecture provided the flexibility to fine-tune operations, ensuring compatibility with diverse report formats. Integration of a pluggable domain-specific layer, enabled seamless customization across different domains, enabling the identification and extraction of relevant information based on specific use cases, thereby enhancing precision and relevance.
The solution employed image-based models to accurately extract handwritten data. Through sophisticated algorithms, it discerned handwritten text, even in varied orientations, overlapping with printed details, or existing within diverse document layouts. The solution features logic mechanisms to reject less accurate outputs, thereby significantly improving the precision and reliability of data extracted from handwritten sections.
The comprehensive approach not only streamlined the extraction process from scanned documents but also provided a robust framework for accommodating various forms, domains, and data types. Its adaptability and accuracy enhancements served as crucial components in automating data entry, reducing errors, and ultimately empowering the client with more efficient and accurate data analysis capabilities.
The client faced challenges with inefficient manual data entry from diverse lab reports, resulting in inaccuracies and resource-intensive processes. Handling variability in report formats, accurately extracting handwritten data, and customizing solutions across domains were major pain points.
The solution leveraged image processing and optical character recognition (OCR) to efficiently extract data from scanned PDF lab reports, overcoming limitations encountered by traditional parsing mechanisms. Its scalable architecture provided the flexibility to fine-tune operations, ensuring compatibility with diverse report formats. Integration of a pluggable domain-specific layer, enabled seamless customization across different domains, enabling the identification and extraction of relevant information based on specific use cases, thereby enhancing precision and relevance.
The solution employed image-based models to accurately extract handwritten data. Through sophisticated algorithms, it discerned handwritten text, even in varied orientations, overlapping with printed details, or existing within diverse document layouts. The solution features logic mechanisms to reject less accurate outputs, thereby significantly improving the precision and reliability of data extracted from handwritten sections.
The comprehensive approach not only streamlined the extraction process from scanned documents but also provided a robust framework for accommodating various forms, domains, and data types. Its adaptability and accuracy enhancements served as crucial components in automating data entry, reducing errors, and ultimately empowering the client with more efficient and accurate data analysis capabilities.