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1.
Stud Health Technol Inform ; 315: 236-240, 2024 Jul 24.
Article in English | MEDLINE | ID: mdl-39049260

ABSTRACT

In Japan, the excessive length of time required for nursing records has become a social problem. A shift to concise "bulleted" records is needed to apply speech recognition and to work with foreign caregivers. Therefore, using 96,000 descriptively described anonymized nursing records, we identified typical situations for each information source and attempted to convert them to "bulleted" records using ChatGPT-3.5(For return from the operating room, Status on return, Temperature control, Blood drainage, Stoma care, Monitoring, Respiration and Oxygen, Sensation and pain, etc.). The results showed that ChatGPT-3.5 has some usable functionality as a tool for extracting keywords in "bulleted" records. Furthermore, through the process of converting to a "bulleted" record, it became clear that the transition to a standardized nursing record utilizing the "Standard Terminology for Nursing Observation and Action (STerNOA)" would be facilitated.


Subject(s)
Nursing Records , Japan , Electronic Health Records , Speech Recognition Software , Natural Language Processing , Standardized Nursing Terminology , Humans
2.
J Healthc Inform Res ; 7(1): 84-103, 2023 Mar.
Article in English | MEDLINE | ID: mdl-36910914

ABSTRACT

Wrong dose, a common prescription error, can cause serious patient harm, especially in the case of high-risk drugs like oral corticosteroids. This study aims to build a machine learning model to predict dose-related prescription modifications for oral prednisolone tablets (i.e., highly imbalanced data with very few positive cases). Prescription data were obtained from the electronic medical records at a single institute. Cluster analysis classified the clinical departments into six clusters with similar patterns of prednisolone prescription. Two patterns of training datasets were created with/without preprocessing by the SMOTE method. Five ML models (SVM, KNN, GB, RF, and BRF) and logistic regression (LR) models were constructed by Python. The model was internally validated by five-fold stratified cross-validation and was validated with a 30% holdout test dataset. Eighty-two thousand five hundred fifty-three prescribing data for prednisolone tablets containing 135 dose-corrected positive cases were obtained. In the original dataset (without SMOTE), only the BRF model showed a good performance (in test dataset, ROC-AUC:0.917, recall: 0.951). In the training dataset preprocessed by SMOTE, performance was improved on all models. The highest performance models with SMOTE were SVM (in test dataset, ROC-AUC: 0.820, recall: 0.659) and BRF (ROC-AUC: 0.814, recall: 0.634). Although the prescribing data for dose-related collection are highly imbalanced, various techniques such as the following have allowed us to build high-performance prediction models: data preprocessing by SMOTE, stratified cross-validation, and BRF classifier corresponding to imbalanced data. ML is useful in complicated dose audits such as oral prednisolone. Supplementary Information: The online version contains supplementary material available at 10.1007/s41666-023-00128-3.

3.
Article in English | MEDLINE | ID: mdl-26262263

ABSTRACT

The aim of the study is to develop a scheme of a decision support system concerning insulin intervention for inpatients. Transaction data for 32,637 inpatients were collected from the EMR. As a result, antidiabetic agents were not taken by 38.9%-41.7% of patients with a Disease Complicated by DM. It is recommended that the EMR should provide a suggestion about insulin level for diseases with DM as a complicating factor.


Subject(s)
Decision Support Systems, Clinical , Diabetes Mellitus/therapy , Electronic Health Records , Insulin/therapeutic use , Quality Improvement , Diabetes Mellitus/drug therapy , Hospitalization , Humans , Hypoglycemic Agents/therapeutic use , Inpatients
4.
Stud Health Technol Inform ; 192: 1225, 2013.
Article in English | MEDLINE | ID: mdl-23920999

ABSTRACT

The aim of our study was to redesign and evaluate the Computerized Prescribing System (PRS) to reduce physicians' workload and improve patient safety. The study was conducted in 2 prefectures in Japan. 186 physicians were surveyed with regard to prescription by physicians and medical office assistants. As a result, it was found that physicians demanded support from medical office assistants with regard to entry of prescription orders but for limited types of medicines. Based on our findings, we developed recommendations for a redesigned outline for PRS for the following 4 scenarios: (1) Continue prescription; (2) narcotic medicines; (3) chemotherapeutic medicines; and (4) medicines used in medical procedures. The outline was evaluated for effectiveness and safety and was confirmed to be a useful future prescription system.


Subject(s)
Attitude of Health Personnel , Efficiency, Organizational , Electronic Prescribing/statistics & numerical data , Medication Errors/prevention & control , Medication Systems, Hospital/statistics & numerical data , Patient Safety , Workload/statistics & numerical data , Efficiency, Organizational/statistics & numerical data , Humans , Japan , Needs Assessment , Physician Assistants/statistics & numerical data , Physicians/statistics & numerical data , Software , Software Design , User-Computer Interface
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