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1
Introduction
2
About Roche
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Decision Support Portfolio
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Search for a Cancer Patient
5
Pathology Report
6
What is NLP
7
Background
8
Optical Character Recognition
9
Entity Resolution
10
The Process
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The Workflow
12
The Pipeline
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Spark NLP
14
Spartan NLP
15
Accuracy
16
Scalability
17
Optimized Hardware
18
Clinical Entity Recognition
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Clinical Entity Resolution
Description:
Explore advanced deep learning techniques for clinical language understanding in this 35-minute conference talk from Databricks. Dive into the application of natural language processing (NLP) in healthcare AI, focusing on unstructured medical notes. Learn about the deep learning techniques, explainability features, and NLP pipeline architecture used to tackle healthcare-specific challenges. Discover how Spark NLP for Healthcare, BERT embeddings, and healthcare-specific embeddings are leveraged to understand clinical terminology and extract specialty-specific information. Gain insights into the use of transfer learning to minimize task-specific annotation requirements and the integration of MLflow with Spark NLP for experiment tracking. Explore the automated deep learning system's capabilities in training, tuning, and measuring models based on clinical annotations. Understand the annotation process, guidelines, and the importance of automation in handling diverse clinical language across providers, document types, and geographies. Learn how explainable results are achieved by highlighting evidence in text for extracted semantic facts. This talk is ideal for data scientists, software engineers, architects, and leaders designing real-world clinical AI applications, offering valuable lessons in applying cutting-edge NLP and deep learning techniques in healthcare. Read more

Automated and Explainable Deep Learning for Clinical Language Understanding

Databricks
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