Journal Article10.1002/cam4.6523
An interpretable deep learning framework for predicting liver metastases in postoperative colorectal cancer patients using natural language processing and clinical data integration.
Jia Li,Xinghao Wang,Linkun Cai,Jing-jing Sun,Zhenghan Yang,Wenjuan Liu,Zhenchang Wang,Han Lv +7 more
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TL;DR: An interpretable deep learning framework for predicting liver metastases in postoperative colorectal cancer patients using natural language processing and clinical data integration achieves superior predictive performance with high accuracy, precision, recall, and F1 score.
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Abstract: BACKGROUND
The significance of liver metastasis (LM) in increasing the risk of death for postoperative colorectal cancer (CRC) patients necessitates innovative approaches to predict LM.
AIM
Our study presents a novel and significant contribution by developing an interpretable fusion model that effectively integrates both free-text medical record data and structured laboratory data to predict LM in postoperative CRC patients.
METHODS
We used a robust dataset of 1463 patients and leveraged state-of-the-art natural language processing (NLP) and machine learning techniques to construct a two-layer fusion framework that demonstrates superior predictive performance compared to single modal models. Our innovative two-tier algorithm fuses the results from different data modalities, achieving balanced prediction results on test data and significantly enhancing the predictive ability of the model. To increase interpretability, we employed Shapley additive explanations to elucidate the contributions of free-text clinical data and structured clinical data to the final model. Furthermore, we translated our findings into practical clinical applications by creating a novel NLP score-based nomogram using the top 13 valid predictors identified in our study.
RESULTS
The proposed fusion models demonstrated superior predictive performance with an accuracy of 80.8%, precision of 80.3%, recall of 80.5%, and an F1 score of 80.8% in predicting LMs.
CONCLUSION
This fusion model represents a notable advancement in predicting LMs for postoperative CRC patients, offering the potential to enhance patient outcomes and support clinical decision-making.
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Citations
An interpretable deep learning framework for predicting liver metastases in postoperative colorectal cancer patients using natural language processing and clinical data integration.
Jia Li,Xinghao Wang,Linkun Cai,Jing-jing Sun,Zhenghan Yang,Wenjuan Liu,Zhenchang Wang,Han Lv +7 more
TL;DR: An interpretable deep learning framework for predicting liver metastases in postoperative colorectal cancer patients using natural language processing and clinical data integration achieves superior predictive performance with high accuracy, precision, recall, and F1 score.
4
Transfer Learning with XGBoost for Predictive Modeling in Electronic Health Records
Arti Badhoutiya,Dr. J. Relin,Francis Raj,D. P. Singh,S. L. Chari,Arun Pratap Srivastava,Kumar Khan +6 more
- 29 Dec 2023
TL;DR: The integration of XGBoost and transfer learning for modeling predictions in Electronic Health Records (EHR) is investigated, confirming the effectiveness of the suggested methodology and inspiring suggestions for additional research.
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Emerging Applications of NLP and Large Language Models in Gastroenterology and Hepatology: A Systematic Review
Mahmud Omar,Κassem Sharif,Benjamin S. Glicksberg,Girish N. Nadkarni,Eyal Klang +4 more
- 27 Jun 2024
TL;DR: NLP and LLMs have revolutionized diagnosis and treatment in gastroenterology and hepatology by extracting data from unstructured medical records and improving clinical decision-making.
Advancing Patient Care through Text Data: A Systematic Review of AI, Emotional Analysis, and Patient-Centric Applications in Healthcare
Prashant Kumar Nag,Amit Bhagat,R. Vishnu Priya +2 more
- 29 Jul 2024
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