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International journal of medical informatics (Shannon, Ireland), 2024-05, Vol.185, p.105387-105387, Article 105387
2024

Details

Autor(en) / Beteiligte
Titel
Using machine learning to link electronic health records in cancer registries: On the tradeoff between linkage quality and manual effort
Ist Teil von
  • International journal of medical informatics (Shannon, Ireland), 2024-05, Vol.185, p.105387-105387, Article 105387
Ort / Verlag
Ireland: Elsevier B.V
Erscheinungsjahr
2024
Link zum Volltext
Quelle
MEDLINE
Beschreibungen/Notizen
  • Cancer registries link a large number of electronic health records reported by medical institutions to already registered records of the matching individual and tumor. Records are automatically linked using deterministic and probabilistic approaches; machine learning is rarely used. Records that cannot be matched automatically with sufficient accuracy are typically processed manually. For application, it is important to know how well record linkage approaches match real-world records and how much manual effort is required to achieve the desired linkage quality. We study the task of linking reported records to the matching registered tumor in cancer registries. We compare the tradeoff between linkage quality and manual effort of five machine learning methods (logistic regression, random forest, gradient boosting, neural network, and a stacked method) to a deterministic baseline. The record linkage methods are compared in a two-class setting (no-match/ match) and a three-class setting (no-match/ undecided/ match). A cancer registry collected and linked the dataset consisting of categorical variables matching 145,755 reported records with 33,289 registered tumors. In the two-class setting, the gradient boosting, neural network, and stacked models have higher accuracy and F1 score (accuracy: 0.968−0.978, F1 score: 0.983−0.988) than the deterministic baseline (accuracy: 0.964, F1 score: 0.980) when the same records are manually processed (0.89% of all records). In the three-class setting, these three machine learning methods can automatically process all reported records and still have higher accuracy and F1 score than the deterministic baseline. The linkage quality of the machine learning methods studied, except for the neural network, increase as the number of manually processed records increases. Machine learning methods can significantly improve linkage quality and reduce the manual effort required by medical coders to match tumor records in cancer registries compared to a deterministic baseline. Our results help cancer registries estimate how linkage quality increases as more records are manually processed. •Machine learning improves the linkage quality of tumor records in cancer registries.•Machine learning also reduces the manual effort required to link tumor records.•Linkage quality increases with the number of manually processed records.
Sprache
Englisch
Identifikatoren
ISSN: 1386-5056
eISSN: 1872-8243
DOI: 10.1016/j.ijmedinf.2024.105387
Titel-ID: cdi_proquest_miscellaneous_2934269107

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