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Main Authors: Loor-Torres, Ricardo, Wu, Yuqi, Cabezas, Esteban, Borras, Mariana, Toro-Tobon, David, Duran, Mayra, Zahidy, Misk Al, Chavez, Maria Mateo, Jacome, Cristian Soto, Fan, Jungwei W., Ospina, Naykky M. Singh, Wu, Yonghui, Brito, Juan P.
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.00015
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author Loor-Torres, Ricardo
Wu, Yuqi
Cabezas, Esteban
Borras, Mariana
Toro-Tobon, David
Duran, Mayra
Zahidy, Misk Al
Chavez, Maria Mateo
Jacome, Cristian Soto
Fan, Jungwei W.
Ospina, Naykky M. Singh
Wu, Yonghui
Brito, Juan P.
author_facet Loor-Torres, Ricardo
Wu, Yuqi
Cabezas, Esteban
Borras, Mariana
Toro-Tobon, David
Duran, Mayra
Zahidy, Misk Al
Chavez, Maria Mateo
Jacome, Cristian Soto
Fan, Jungwei W.
Ospina, Naykky M. Singh
Wu, Yonghui
Brito, Juan P.
contents Background We aim to use Natural Language Processing (NLP) to automate the extraction and classification of thyroid cancer risk factors from pathology reports. Methods We analyzed 1,410 surgical pathology reports from adult papillary thyroid cancer patients at Mayo Clinic, Rochester, MN, from 2010 to 2019. Structured and non-structured reports were used to create a consensus-based ground truth dictionary and categorized them into modified recurrence risk levels. Non-structured reports were narrative, while structured reports followed standardized formats. We then developed ThyroPath, a rule-based NLP pipeline, to extract and classify thyroid cancer features into risk categories. Training involved 225 reports (150 structured, 75 unstructured), with testing on 170 reports (120 structured, 50 unstructured) for evaluation. The pipeline's performance was assessed using both strict and lenient criteria for accuracy, precision, recall, and F1-score. Results In extraction tasks, ThyroPath achieved overall strict F-1 scores of 93% for structured reports and 90 for unstructured reports, covering 18 thyroid cancer pathology features. In classification tasks, ThyroPath-extracted information demonstrated an overall accuracy of 93% in categorizing reports based on their corresponding guideline-based risk of recurrence: 76.9% for high-risk, 86.8% for intermediate risk, and 100% for both low and very low-risk cases. However, ThyroPath achieved 100% accuracy across all thyroid cancer risk categories with human-extracted pathology information. Conclusions ThyroPath shows promise in automating the extraction and risk recurrence classification of thyroid pathology reports at large scale. It offers a solution to laborious manual reviews and advancing virtual registries. However, it requires further validation before implementation.
format Preprint
id arxiv_https___arxiv_org_abs_2406_00015
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Use of natural language processing to extract and classify papillary thyroid cancer features from surgical pathology reports
Loor-Torres, Ricardo
Wu, Yuqi
Cabezas, Esteban
Borras, Mariana
Toro-Tobon, David
Duran, Mayra
Zahidy, Misk Al
Chavez, Maria Mateo
Jacome, Cristian Soto
Fan, Jungwei W.
Ospina, Naykky M. Singh
Wu, Yonghui
Brito, Juan P.
Computation and Language
Background We aim to use Natural Language Processing (NLP) to automate the extraction and classification of thyroid cancer risk factors from pathology reports. Methods We analyzed 1,410 surgical pathology reports from adult papillary thyroid cancer patients at Mayo Clinic, Rochester, MN, from 2010 to 2019. Structured and non-structured reports were used to create a consensus-based ground truth dictionary and categorized them into modified recurrence risk levels. Non-structured reports were narrative, while structured reports followed standardized formats. We then developed ThyroPath, a rule-based NLP pipeline, to extract and classify thyroid cancer features into risk categories. Training involved 225 reports (150 structured, 75 unstructured), with testing on 170 reports (120 structured, 50 unstructured) for evaluation. The pipeline's performance was assessed using both strict and lenient criteria for accuracy, precision, recall, and F1-score. Results In extraction tasks, ThyroPath achieved overall strict F-1 scores of 93% for structured reports and 90 for unstructured reports, covering 18 thyroid cancer pathology features. In classification tasks, ThyroPath-extracted information demonstrated an overall accuracy of 93% in categorizing reports based on their corresponding guideline-based risk of recurrence: 76.9% for high-risk, 86.8% for intermediate risk, and 100% for both low and very low-risk cases. However, ThyroPath achieved 100% accuracy across all thyroid cancer risk categories with human-extracted pathology information. Conclusions ThyroPath shows promise in automating the extraction and risk recurrence classification of thyroid pathology reports at large scale. It offers a solution to laborious manual reviews and advancing virtual registries. However, it requires further validation before implementation.
title Use of natural language processing to extract and classify papillary thyroid cancer features from surgical pathology reports
topic Computation and Language
url https://arxiv.org/abs/2406.00015