Implementation and Test Run of Hospital-Pharmacy Cooperation Cloud System for Inhalation Therapy

Author(s):  
Taiki Irie ◽  
Kazuya Yanashima ◽  
Kenshiro Yoshimura ◽  
Satoshi Yamauchi ◽  
Sumika Fukuyama ◽  
...  
2017 ◽  
Vol 137 (2) ◽  
pp. 360-369
Author(s):  
Takeshi Toda ◽  
Ichitaro Nakura ◽  
Sumika Fukuyama ◽  
Yu Matsumura ◽  
Satoshi Yoshida ◽  
...  

2017 ◽  
Vol 3 (3) ◽  
pp. 350-353
Author(s):  
Sabeeha Kausar ◽  
Muhammad Imran

Objective: This study was conducted to analyze and evaluate the prevalence of prescription errors, to optimize the medication effectiveness and patient safety and to encourage the rational prescribing practices. Method: sample of 250 prescriptions was randomly collected from outdoor hospital pharmacy (n=157) and from community pharmacy (n=93) and analyzed manually to estimate the prevalence of prescription errors. Results: Results calculated by using SPPS Version 23 and MS Excel 2013 are as follow; 41.4% prescription collected from outdoor hospital pharmacy presented significant prescribing errors while 54.7% in sample collected from community pharmacy. The prescriptions were segregated and errors were estimated using following parameters; dose, dosage form, dosing frequency, drug-drug interactions, spelling, and duplication of generic, therapy duration and unnecessary drugs. Conclusion: The prevalence of prescribing errors in sample of community pharmacy was 12.37% greater than found in prescriptions of hospital pharmacy. The prevalence of prescription errors can be reduced by physician education, using automated prescribing systems and immediate review of prescription by pharmacist before dispensing of prescription items to patients.


Author(s):  
Chaimae Saadi ◽  
Habiba Chaoui
Keyword(s):  

2020 ◽  
Author(s):  
Kyoung Ja Moon ◽  
Chang-Sik Son ◽  
Jong-Ha Lee ◽  
Mina Park

BACKGROUND Long-term care facilities demonstrate low levels of knowledge and care for patients with delirium and are often not properly equipped with an electronic medical record system, thereby hindering systematic approaches to delirium monitoring. OBJECTIVE This study aims to develop a web-based delirium preventive application (app), with an integrated predictive model, for long-term care (LTC) facilities using artificial intelligence (AI). METHODS This methodological study was conducted to develop an app and link it with the Amazon cloud system. The app was developed based on an evidence-based literature review and the validity of the AI prediction model algorithm. Participants comprised 206 persons admitted to LTC facilities. The app was developed in 5 phases. First, through a review of evidence-based literature, risk factors for predicting delirium and non-pharmaceutical contents for preventive intervention were identified. Second, the app, consisting of several screens, was designed; this involved providing basic information, predicting the onset of delirium according to risk factors, assessing delirium, and intervening for prevention. Third, based on the existing data, predictive analysis was performed, and the algorithm developed through this was calculated at the site linked to the web through the Amazon cloud system and sent back to the app. Fourth, a pilot test using the developed app was conducted with 33 patients. Fifth, the app was finalized. RESULTS We developed the Web_DeliPREVENT_4LCF for patients of LTC facilities. This app provides information on delirium, inputs risk factors, predicts and informs the degree of delirium risk, and enables delirium measurement or delirium prevention interventions to be immediately implemented with a verified tool. CONCLUSIONS This web-based application is evidence-based and offers easy mobilization and care to patients with delirium in LTC facilities. Therefore, the use of this app improves the unrecognized of delirium and predicts the degree of delirium risk, thereby helping initiatives for delirium prevention and providing interventions. This would ultimately improve patient safety and quality of care. CLINICALTRIAL none


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