Natural Language Processing on Clinical Notes: Advanced Techniques for Risk Prediction and Summarization

Authors

  • NISHANTH JOSEPH PAULRAJ Thermo Fisher Scientific, USA

DOI:

https://doi.org/10.32996/jcsts.2025.7.3.56

Keywords:

Clinical natural language processing, automated summarization, risk prediction, healthcare informatics, medical text mining

Abstract

This article explores the application of Natural Language Processing (NLP) techniques to clinical notes, focusing specifically on risk prediction and automated summarization capabilities. Healthcare institutions generate vast amounts of unstructured clinical text that contains critical information not captured in structured data fields. It examines how modern NLP approaches, including named entity recognition, text classification, and clinical summarization, can extract actionable insights from narrative documentation. It discusses specialized language models like BioBERT, ClinicalBERT, and Med-PaLM that have been optimized for clinical text processing, along with implementation tools such as ScispaCy and Hugging Face Transformers. Practical applications with demonstrated efficacy include risk prediction from clinical notes and adverse drug reaction detection. It explores how the MIMIC datasets provide valuable resources for developing and evaluating these approaches. The article also addresses future directions and challenges in multimodal clinical AI integration, explainability and trust in clinical NLP systems, and privacy and security considerations when working with sensitive clinical text. Overall, this comprehensive review highlights how advanced NLP techniques offer transformative capabilities for extracting clinical intelligence from unstructured documentation.

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Published

2025-05-07

Issue

Section

Research Article

How to Cite

NISHANTH JOSEPH PAULRAJ. (2025). Natural Language Processing on Clinical Notes: Advanced Techniques for Risk Prediction and Summarization. Journal of Computer Science and Technology Studies, 7(3), 494-502. https://doi.org/10.32996/jcsts.2025.7.3.56