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1.
Medicine (Baltimore) ; 103(15): e37822, 2024 Apr 12.
Article in English | MEDLINE | ID: mdl-38608079

ABSTRACT

The "Internet Plus" system has made continuous nursing intervention much more feasible to implement, especially in terms of malignant tumors. We aimed to evaluate continuous nursing based on "Internet Plus" for patients diagnosed with bladder cancer with hematuria being treated by drug-eluting bead embolization. This retrospective study included 43 patients, diagnosed with bladder cancer with hemorrhages, who had undergone transcatheter bladder arterial chemoembolization by drug-eluting bead embolization at our hospital between January 2017 and January 2023. They were divided into a control (21 patients) and an observation group (22 patients). The Medical Coping Style Scale, disease knowledge (including regular follow-up and interventional treatment), patient satisfaction, and caregiver burden in both groups were compared on the day of discharge and at the 1-month follow-up for each patient. The confrontation score of the observation group was higher than that of the control group, whereas the resignation and avoidance scores were lower. The disease knowledge was higher in the observation group, and the caregiver burden scores of the observation group were significantly lower. The patient satisfaction scores of the control group (84.7 ±â€…2.6) were lower than those of the observation group (90.5 ±â€…5.4). Continuous nursing based on "Internet Plus" could improve the quality of life of patients and their satisfaction regarding the meeting of their and their families' psychological and nursing needs.


Subject(s)
Quality of Life , Urinary Bladder Neoplasms , Humans , Retrospective Studies , Urinary Bladder Neoplasms/therapy , Internet , Urinary Bladder
2.
Psychiatry Res ; 334: 115817, 2024 Apr.
Article in English | MEDLINE | ID: mdl-38430816

ABSTRACT

Although 20 % of patients with depression receiving treatment do not achieve remission, predicting treatment-resistant depression (TRD) remains challenging. In this study, we aimed to develop an explainable multimodal prediction model for TRD using structured electronic medical record data, brain morphometry, and natural language processing. In total, 247 patients with a new depressive episode were included. TRD-predictive models were developed based on the combination of following parameters: selected tabular dataset features, independent components-map weightings from brain T1-weighted magnetic resonance imaging (MRI), and topic probabilities from clinical notes. All models applied the extreme gradient boosting (XGBoost) algorithm via five-fold cross-validation. The model using all data sources showed the highest area under the receiver operating characteristic of 0.794, followed by models that used combined brain MRI and structured data, brain MRI and clinical notes, clinical notes and structured data, brain MRI only, structured data only, and clinical notes only (0.770, 0.762, 0.728, 0.703, 0.684, and 0.569, respectively). Classifications of TRD were driven by several predictors, such as previous exposure to antidepressants and antihypertensive medications, sensorimotor network, default mode network, and somatic symptoms. Our findings suggest that a combination of clinical data with neuroimaging and natural language processing variables improves the prediction of TRD.


Subject(s)
Depression , Natural Language Processing , Humans , Depression/therapy , Brain , Antidepressive Agents/therapeutic use , Magnetic Resonance Imaging/methods
3.
Stud Health Technol Inform ; 310: 1438-1439, 2024 Jan 25.
Article in English | MEDLINE | ID: mdl-38269685

ABSTRACT

This study developed readmission prediction models using Home Healthcare (HHC) documents via natural language processing (NLP). An electronic health record of Ajou University Hospital was used to develop prediction models (A reference model using only structured data, and an NLP-enriched model with structured and unstructured data). Among 573 patients, 63 were readmitted to the hospital. Five topics were extracted from HHC documents and improved the model performance (AUROC 0.740).


Subject(s)
Home Care Services , Medicine , Humans , Patient Readmission , Hospitals, University , Delivery of Health Care
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