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OR13-07 Crystal Bone: Personalized, Short-Term Fracture Risk Prediction with Natural Language Processing Methods
Fragility fractures due to osteoporosis are common and are associated with significant clinical, personal, and economic burden. Even after a fragility fracture, osteoporosis remains widely underdiagnosed and undertreated. Common fracture risk assessment tools, such as FRAX(1) and Garvan,(2) confer r...
Autores principales: | , , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Oxford University Press
2020
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7207589/ http://dx.doi.org/10.1210/jendso/bvaa046.018 |
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author | Almog, Yasmeen Rai, Angshu Mishra, Anirban Moulaison, Amanda Powell, Ross Weinberg, Kerry Hamilton, Celeste Oates, Mary McCloskey, Eugene Cummings, Steven R |
author_facet | Almog, Yasmeen Rai, Angshu Mishra, Anirban Moulaison, Amanda Powell, Ross Weinberg, Kerry Hamilton, Celeste Oates, Mary McCloskey, Eugene Cummings, Steven R |
author_sort | Almog, Yasmeen |
collection | PubMed |
description | Fragility fractures due to osteoporosis are common and are associated with significant clinical, personal, and economic burden. Even after a fragility fracture, osteoporosis remains widely underdiagnosed and undertreated. Common fracture risk assessment tools, such as FRAX(1) and Garvan,(2) confer risk over the long term but do not provide short-term risk estimates necessary to identify very high-risk patients likely to fracture in the next 1–2 years. Furthermore, these tools utilize cross-sectional data representing a subset of all available clinical risk factors for risk prediction. Thus, these methods are generalized across patient populations and may not fully utilize patient histories commonly found in electronic health records (EHRs) that contain temporal information for thousands of unique features. The Optum(®) de-identified EHR dataset (2007–2018) provides an opportunity to use historical medical data to generate short-term, personalized fracture risk predictions for individual patients. We used the Optum(®) dataset to develop Crystal Bone, a method that applies machine learning techniques commonly used in natural language processing to the temporal nature of patient histories in order to predict fracture risk over a 1- to 2-year timeframe. Specifically, we repurposed deep-learning models typically applied to language-based prediction tasks in which the goal is to learn the meanings of words and sentences to classify them. Crystal Bone uses context-based embedding techniques to learn an equivalent “semantic” meaning of various medical events. Similar to how language models predict the next word in a given sentence or the topic of an overall document, Crystal Bone can predict that a patient’s future trajectory may contain a fracture or that the “signature” of the patient’s overall journey is similar to that of a typical fracture patient. We applied Crystal Bone to two datasets, one enriched for fracture patients and one representative of a typical hospital system. In both datasets, when predicting likelihood of fracture in the next 1–2 years, Crystal Bone had an area under the receiver operating characteristic (AUROC) score ranging from 72% to 83% on a test (hold-out) dataset. These results suggest performance similar to that of FRAX and Garvan, which have 10-year fracture risk prediction AUROC scores of 64.4% +/- 3.7%.(3) Our results suggest that it is possible to use each patient’s unique medical history as it changes over time to predict patients at risk for fracture in 1–2 years. Furthermore, it is theoretically possible to integrate a model like Crystal Bone directly into an EHR system, enabling “hands-off” fracture risk prediction, which could lead to improved identification of patients at very high risk for fracture. (1)Kanis JA, Osteoporos Int. 2012;23:2239–56. (2)Rubin KH, J Bone Miner Res. 2013;28:1701–17. (3)Leslie WD, Osteoporos Int. 2014;25:1–21. |
format | Online Article Text |
id | pubmed-7207589 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2020 |
publisher | Oxford University Press |
record_format | MEDLINE/PubMed |
spelling | pubmed-72075892020-05-13 OR13-07 Crystal Bone: Personalized, Short-Term Fracture Risk Prediction with Natural Language Processing Methods Almog, Yasmeen Rai, Angshu Mishra, Anirban Moulaison, Amanda Powell, Ross Weinberg, Kerry Hamilton, Celeste Oates, Mary McCloskey, Eugene Cummings, Steven R J Endocr Soc Bone and Mineral Metabolism Fragility fractures due to osteoporosis are common and are associated with significant clinical, personal, and economic burden. Even after a fragility fracture, osteoporosis remains widely underdiagnosed and undertreated. Common fracture risk assessment tools, such as FRAX(1) and Garvan,(2) confer risk over the long term but do not provide short-term risk estimates necessary to identify very high-risk patients likely to fracture in the next 1–2 years. Furthermore, these tools utilize cross-sectional data representing a subset of all available clinical risk factors for risk prediction. Thus, these methods are generalized across patient populations and may not fully utilize patient histories commonly found in electronic health records (EHRs) that contain temporal information for thousands of unique features. The Optum(®) de-identified EHR dataset (2007–2018) provides an opportunity to use historical medical data to generate short-term, personalized fracture risk predictions for individual patients. We used the Optum(®) dataset to develop Crystal Bone, a method that applies machine learning techniques commonly used in natural language processing to the temporal nature of patient histories in order to predict fracture risk over a 1- to 2-year timeframe. Specifically, we repurposed deep-learning models typically applied to language-based prediction tasks in which the goal is to learn the meanings of words and sentences to classify them. Crystal Bone uses context-based embedding techniques to learn an equivalent “semantic” meaning of various medical events. Similar to how language models predict the next word in a given sentence or the topic of an overall document, Crystal Bone can predict that a patient’s future trajectory may contain a fracture or that the “signature” of the patient’s overall journey is similar to that of a typical fracture patient. We applied Crystal Bone to two datasets, one enriched for fracture patients and one representative of a typical hospital system. In both datasets, when predicting likelihood of fracture in the next 1–2 years, Crystal Bone had an area under the receiver operating characteristic (AUROC) score ranging from 72% to 83% on a test (hold-out) dataset. These results suggest performance similar to that of FRAX and Garvan, which have 10-year fracture risk prediction AUROC scores of 64.4% +/- 3.7%.(3) Our results suggest that it is possible to use each patient’s unique medical history as it changes over time to predict patients at risk for fracture in 1–2 years. Furthermore, it is theoretically possible to integrate a model like Crystal Bone directly into an EHR system, enabling “hands-off” fracture risk prediction, which could lead to improved identification of patients at very high risk for fracture. (1)Kanis JA, Osteoporos Int. 2012;23:2239–56. (2)Rubin KH, J Bone Miner Res. 2013;28:1701–17. (3)Leslie WD, Osteoporos Int. 2014;25:1–21. Oxford University Press 2020-05-08 /pmc/articles/PMC7207589/ http://dx.doi.org/10.1210/jendso/bvaa046.018 Text en © Endocrine Society 2020. http://creativecommons.org/licenses/by-nc-nd/4.0/ This is an Open Access article distributed under the terms of the Creative Commons Attribution-NonCommercial-NoDerivs licence (http://creativecommons.org/licenses/by-nc-nd/4.0/), which permits non-commercial reproduction and distribution of the work, in any medium, provided the original work is not altered or transformed in any way, and that the work is properly cited. For commercial re-use, please contact journals.permissions@oup.com |
spellingShingle | Bone and Mineral Metabolism Almog, Yasmeen Rai, Angshu Mishra, Anirban Moulaison, Amanda Powell, Ross Weinberg, Kerry Hamilton, Celeste Oates, Mary McCloskey, Eugene Cummings, Steven R OR13-07 Crystal Bone: Personalized, Short-Term Fracture Risk Prediction with Natural Language Processing Methods |
title | OR13-07 Crystal Bone: Personalized, Short-Term Fracture Risk Prediction with Natural Language Processing Methods |
title_full | OR13-07 Crystal Bone: Personalized, Short-Term Fracture Risk Prediction with Natural Language Processing Methods |
title_fullStr | OR13-07 Crystal Bone: Personalized, Short-Term Fracture Risk Prediction with Natural Language Processing Methods |
title_full_unstemmed | OR13-07 Crystal Bone: Personalized, Short-Term Fracture Risk Prediction with Natural Language Processing Methods |
title_short | OR13-07 Crystal Bone: Personalized, Short-Term Fracture Risk Prediction with Natural Language Processing Methods |
title_sort | or13-07 crystal bone: personalized, short-term fracture risk prediction with natural language processing methods |
topic | Bone and Mineral Metabolism |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7207589/ http://dx.doi.org/10.1210/jendso/bvaa046.018 |
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