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  1. Article ; Online: Correction to: Predicting polypharmacy in half a million adults in the Iranian population: comparison of machine learning algorithms.

    Seyedtabib, Maryam / Kamyari, Naser

    BMC medical informatics and decision making

    2023  Volume 23, Issue 1, Page(s) 112

    Language English
    Publishing date 2023-06-22
    Publishing country England
    Document type Published Erratum
    ZDB-ID 2046490-3
    ISSN 1472-6947 ; 1472-6947
    ISSN (online) 1472-6947
    ISSN 1472-6947
    DOI 10.1186/s12911-023-02203-6
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  2. Article ; Online: Predicting polypharmacy in half a million adults in the Iranian population: comparison of machine learning algorithms.

    Seyedtabib, Maryam / Kamyari, Naser

    BMC medical informatics and decision making

    2023  Volume 23, Issue 1, Page(s) 84

    Abstract: Background: Polypharmacy (PP) is increasingly common in Iran, and contributes to the substantial burden of drug-related morbidity, increasing the potential for drug interactions and potentially inappropriate medications. Machine learning algorithms (ML) ...

    Abstract Background: Polypharmacy (PP) is increasingly common in Iran, and contributes to the substantial burden of drug-related morbidity, increasing the potential for drug interactions and potentially inappropriate medications. Machine learning algorithms (ML) can be employed as an alternative solution for the prediction of PP. Therefore, our study aimed to compare several ML algorithms to predict the PP using the health insurance claims data and choose the best-performing algorithm as a predictive tool for decision-making.
    Methods: This population-based cross-sectional study was performed between April 2021 and March 2022. After feature selection, information about 550 thousand patients were obtained from National Center for Health Insurance Research (NCHIR). Afterwards, several ML algorithms were trained to predict PP. Finally, to assess the models' performance, the metrics derived from the confusion matrix were calculated.
    Results: The study sample comprised 554 133 adults with a median (IQR) age of 51 years (40 - 62) that nested in 27 cities within the Khuzestan province of Iran. Most of the patients were female (62.5%), married (63.5%), and employed (83.2%) during the last year. The prevalence of PP in all populations was about 36.0%. After performing the feature selection, out of 23 features, the number of prescriptions, Insurance coverage for prescription drugs, and hypertension were found as the top three predictors. Experimental results showed that Random Forest (RF) performed better than other ML algorithms with recall, specificity, accuracy, precision and F1-score of 63.92%, 89.92%, 79.99%, 63.92% and 63.92% respectively.
    Conclusion: It was found that ML provides a reasonable level of accuracy in predicting polypharmacy. Therefore, the prediction models based on ML, especially the RF algorithm, performed better than other methods for predicting PP in Iranian people in terms of the performance criteria.
    MeSH term(s) Humans ; Adult ; Female ; Middle Aged ; Male ; Iran/epidemiology ; Polypharmacy ; Cross-Sectional Studies ; Algorithms ; Machine Learning
    Language English
    Publishing date 2023-05-05
    Publishing country England
    Document type Journal Article ; Research Support, Non-U.S. Gov't
    ZDB-ID 2046490-3
    ISSN 1472-6947 ; 1472-6947
    ISSN (online) 1472-6947
    ISSN 1472-6947
    DOI 10.1186/s12911-023-02177-5
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  3. Article ; Online: The predictive power of data: machine learning analysis for Covid-19 mortality based on personal, clinical, preclinical, and laboratory variables in a case-control study.

    Seyedtabib, Maryam / Najafi-Vosough, Roya / Kamyari, Naser

    BMC infectious diseases

    2024  Volume 24, Issue 1, Page(s) 411

    Abstract: Background and purpose: The COVID-19 pandemic has presented unprecedented public health challenges worldwide. Understanding the factors contributing to COVID-19 mortality is critical for effective management and intervention strategies. This study aims ... ...

    Abstract Background and purpose: The COVID-19 pandemic has presented unprecedented public health challenges worldwide. Understanding the factors contributing to COVID-19 mortality is critical for effective management and intervention strategies. This study aims to unlock the predictive power of data collected from personal, clinical, preclinical, and laboratory variables through machine learning (ML) analyses.
    Methods: A retrospective study was conducted in 2022 in a large hospital in Abadan, Iran. Data were collected and categorized into demographic, clinical, comorbid, treatment, initial vital signs, symptoms, and laboratory test groups. The collected data were subjected to ML analysis to identify predictive factors associated with COVID-19 mortality. Five algorithms were used to analyze the data set and derive the latent predictive power of the variables by the shapely additive explanation values.
    Results: Results highlight key factors associated with COVID-19 mortality, including age, comorbidities (hypertension, diabetes), specific treatments (antibiotics, remdesivir, favipiravir, vitamin zinc), and clinical indicators (heart rate, respiratory rate, temperature). Notably, specific symptoms (productive cough, dyspnea, delirium) and laboratory values (D-dimer, ESR) also play a critical role in predicting outcomes. This study highlights the importance of feature selection and the impact of data quantity and quality on model performance.
    Conclusion: This study highlights the potential of ML analysis to improve the accuracy of COVID-19 mortality prediction and emphasizes the need for a comprehensive approach that considers multiple feature categories. It highlights the critical role of data quality and quantity in improving model performance and contributes to our understanding of the multifaceted factors that influence COVID-19 outcomes.
    MeSH term(s) Humans ; Case-Control Studies ; Retrospective Studies ; Pandemics ; COVID-19 ; Algorithms
    Language English
    Publishing date 2024-04-18
    Publishing country England
    Document type Journal Article
    ZDB-ID 2041550-3
    ISSN 1471-2334 ; 1471-2334
    ISSN (online) 1471-2334
    ISSN 1471-2334
    DOI 10.1186/s12879-024-09298-w
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  4. Article ; Online: Correction to

    Maryam Seyedtabib / Naser Kamyari

    BMC Medical Informatics and Decision Making, Vol 23, Iss 1, Pp 1-

    Predicting polypharmacy in half a million adults in the Iranian population: comparison of machine learning algorithms

    2023  Volume 1

    Keywords Computer applications to medicine. Medical informatics ; R858-859.7
    Language English
    Publishing date 2023-06-01T00:00:00Z
    Publisher BMC
    Document type Article ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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  5. Article ; Online: Predicting polypharmacy in half a million adults in the Iranian population

    Maryam Seyedtabib / Naser Kamyari

    BMC Medical Informatics and Decision Making, Vol 23, Iss 1, Pp 1-

    comparison of machine learning algorithms

    2023  Volume 11

    Abstract: Abstract Background Polypharmacy (PP) is increasingly common in Iran, and contributes to the substantial burden of drug-related morbidity, increasing the potential for drug interactions and potentially inappropriate medications. Machine learning ... ...

    Abstract Abstract Background Polypharmacy (PP) is increasingly common in Iran, and contributes to the substantial burden of drug-related morbidity, increasing the potential for drug interactions and potentially inappropriate medications. Machine learning algorithms (ML) can be employed as an alternative solution for the prediction of PP. Therefore, our study aimed to compare several ML algorithms to predict the PP using the health insurance claims data and choose the best-performing algorithm as a predictive tool for decision-making. Methods This population-based cross-sectional study was performed between April 2021 and March 2022. After feature selection, information about 550 thousand patients were obtained from National Center for Health Insurance Research (NCHIR). Afterwards, several ML algorithms were trained to predict PP. Finally, to assess the models’ performance, the metrics derived from the confusion matrix were calculated. Results The study sample comprised 554 133 adults with a median (IQR) age of 51 years (40 – 62) that nested in 27 cities within the Khuzestan province of Iran. Most of the patients were female (62.5%), married (63.5%), and employed (83.2%) during the last year. The prevalence of PP in all populations was about 36.0%. After performing the feature selection, out of 23 features, the number of prescriptions, Insurance coverage for prescription drugs, and hypertension were found as the top three predictors. Experimental results showed that Random Forest (RF) performed better than other ML algorithms with recall, specificity, accuracy, precision and F1-score of 63.92%, 89.92%, 79.99%, 63.92% and 63.92% respectively. Conclusion It was found that ML provides a reasonable level of accuracy in predicting polypharmacy. Therefore, the prediction models based on ML, especially the RF algorithm, performed better than other methods for predicting PP in Iranian people in terms of the performance criteria.
    Keywords Polypharmacy ; Machine learning ; Artificial intelligence ; Random Forest ; Iranian ; Computer applications to medicine. Medical informatics ; R858-859.7
    Subject code 006
    Language English
    Publishing date 2023-05-01T00:00:00Z
    Publisher BMC
    Document type Article ; Online
    Database BASE - Bielefeld Academic Search Engine (life sciences selection)

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  6. Article ; Online: Impact of virtual problem-based learning of cardiopulmonary resuscitation on fourth-year nursing students' satisfaction and performance: a quasi-experimental study.

    Falahan, Seyedeh Nayereh / Habibi, Edris / Kamyari, Naser / Yousofvand, Vahid

    BMC medical education

    2024  Volume 24, Issue 1, Page(s) 425

    Abstract: Background: Regarding competency of nursing students in cardiopulmonary resuscitation (CPR), nursing students frequently exhibit inadequate performance and low satisfaction levels regarding CPR training methods. The problem-based learning (PBL) method, ... ...

    Abstract Background: Regarding competency of nursing students in cardiopulmonary resuscitation (CPR), nursing students frequently exhibit inadequate performance and low satisfaction levels regarding CPR training methods. The problem-based learning (PBL) method, characterized by a constructivist approach, has been underutilized for CPR training, particularly in a virtual format. Hence, this study aims to assess the influence of virtual problem-based learning in cardiopulmonary resuscitation on the satisfaction and performance of fourth-year nursing students.
    Methods: This quasi-experimental study, conducted in 2022, involved 80 final-year nursing students from Hamadan University of Medical Sciences, Iran. The participants were randomly assigned to either the experimental group (N = 40) or the control group (N = 40). The experimental group was further divided into six smaller groups on WhatsApp. Both groups initially received routine training sessions, after which the experimental group engaged in four problem-based learning sessions across three different scenarios. Data collection included demographic information, a teaching satisfaction questionnaire, and cardiopulmonary resuscitation checklists administered immediately and one month after the intervention.
    Results: The study was initiated and concluded with 80 participants. The study commenced with no significant disparity in the mean scores of cardiopulmonary resuscitation performance, encompassing chest compressions (P = 0.451) and airway management (P = 0.378), as well as teaching satisfaction (p = 0.115) among the nursing students between the experimental and control groups. However, subsequent to the intervention, both immediately and one month later, the experimental group displayed notable enhancements in mean scores for cardiopulmonary resuscitation performance, comprising chest compressions (p < 0.001) and airway management (p < 0.001), as well as teaching satisfaction (p < 0.001) compared to the control group.
    Conclusion: Based on the study's findings, it is recommended that nursing educators implement this approach in their teaching practices.
    MeSH term(s) Humans ; Problem-Based Learning/methods ; Students, Nursing ; Surveys and Questionnaires ; Cardiopulmonary Resuscitation/education ; Personal Satisfaction
    Language English
    Publishing date 2024-04-19
    Publishing country England
    Document type Randomized Controlled Trial ; Journal Article
    ZDB-ID 2044473-4
    ISSN 1472-6920 ; 1472-6920
    ISSN (online) 1472-6920
    ISSN 1472-6920
    DOI 10.1186/s12909-024-05375-5
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  7. Article: Comparing the Performance of Emergency Department Personnel and Patients' Preferences in Breaking Bad News.

    Gholami, Mohammad / Valiee, Sina / Kamyari, Naser / Vatandost, Salam

    Bulletin of emergency and trauma

    2023  Volume 11, Issue 3, Page(s) 146–153

    Abstract: Objective: Breaking bad news (BBN) is a critical aspect of healthcare delivery that can have significant implications for patients' outcomes. Inadequate and inappropriate delivery of bad news can result in detrimental psychological and emotional effects. ...

    Abstract Objective: Breaking bad news (BBN) is a critical aspect of healthcare delivery that can have significant implications for patients' outcomes. Inadequate and inappropriate delivery of bad news can result in detrimental psychological and emotional effects. This study aimed to compare the performance of emergency department (ED) personnel and patients' preferences in BBN.
    Methods: This descriptive-analytical study was conducted in 2022, and 135 patients who were admitted to the ED were included using quota sampling. Data were collected using a demographic questionnaire, a researcher-made questionnaire, and a standard questionnaire on attitudes toward the methods of BBN in the ED. The data were analyzed using SPSS software (version 16), and a
    Results: The results showed that the majority of patients (69.6%) received bad news from nurses. Based on the conditions mentioned in the standard questionnaire, the overall performance of personnel was 6.08±4.22 out of 19, while the overall attitude score (59.66±7.66 out of 76) revealed patients' high tendency to receive bad news. There was a statistically significant difference between the total score of personnel performances and the total score of patients' attitudes (
    Conclusion: The performance of ED personnel concerning patients' attitudes toward the method of BBN in the emergency department was not optimal. Therefore, it is recommended to implement appropriate training programs for medical professionals, especially physicians, and nurses, to enhance their communication skills and reduce the detrimental effects of inappropriate delivery of bad news in medical settings.
    Language English
    Publishing date 2023-02-08
    Publishing country Iran
    Document type Journal Article
    ZDB-ID 2722734-0
    ISSN 2322-3960 ; 2322-2522
    ISSN (online) 2322-3960
    ISSN 2322-2522
    DOI 10.30476/BEAT.2023.98439.1428
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  8. Article ; Online: Seroprevalence and Potential Risk Factors of Toxocariasis among General Population in Southwest Iran: Implications on the One Health Approach.

    Foroutan, Masoud / Vafae Eslahi, Aida / Soltani, Shahrzad / Kamyari, Naser / Moradi-Joo, Ehsan / Magnaval, Jean-Francois / Badri, Milad

    Journal of immunology research

    2024  Volume 2024, Page(s) 4246781

    Abstract: Toxocariasis is one of the most common zoonotic diseases distributed worldwide. This study aimed to estimate the seroprevalence of anti- ...

    Abstract Toxocariasis is one of the most common zoonotic diseases distributed worldwide. This study aimed to estimate the seroprevalence of anti-
    MeSH term(s) Male ; Female ; Humans ; Animals ; Dogs ; Middle Aged ; Toxocariasis/epidemiology ; Toxocariasis/etiology ; Seroepidemiologic Studies ; Cross-Sectional Studies ; Iran/epidemiology ; One Health ; Antibodies, Helminth ; Toxocara ; Zoonoses/epidemiology ; Zoonoses/complications ; Enzyme-Linked Immunosorbent Assay ; Risk Factors ; Immunoglobulin G ; Water
    Chemical Substances Antibodies, Helminth ; Immunoglobulin G ; Water (059QF0KO0R)
    Language English
    Publishing date 2024-02-13
    Publishing country Egypt
    Document type Journal Article
    ZDB-ID 2817541-4
    ISSN 2314-7156 ; 2314-7156
    ISSN (online) 2314-7156
    ISSN 2314-7156
    DOI 10.1155/2024/4246781
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  9. Article ; Online: Effects of family-based dignity intervention and expressive writing on anticipatory grief in family caregivers of patients with cancer: a randomized controlled trial.

    Ghezeljeh, Tahereh Najafi / Seyedfatemi, Naima / Bolhari, Jafar / Kamyari, Naser / Rezaei, Masoud

    BMC psychiatry

    2023  Volume 23, Issue 1, Page(s) 220

    Abstract: Family caregivers of dying cancer patients may suffer from grief experiences and bereavement complications. Previous studies have proposed some psycho-emotional interventions for the management of these complications. However, little attention has been ... ...

    Abstract Family caregivers of dying cancer patients may suffer from grief experiences and bereavement complications. Previous studies have proposed some psycho-emotional interventions for the management of these complications. However, little attention has been given to family-based dignity intervention and expressive writing. This study was conducted to examine the effects of family-based dignity intervention and expressive writing, combined and alone, on anticipatory grief in family caregivers of dying cancer patients. This was a randomized controlled trial, in which 200 family caregivers of dying cancer patients were randomly assigned to four intervention groups: family-based dignity intervention (n = 50), expressive writing intervention (n = 50), combined family-based single dignity intervention and expressive writing (n = 50), and control group (n = 50). In three times (baseline, 1 week, and 2 weeks after the interventions), anticipatory grief was assessed by a 13-item anticipatory grief scale (AGS). Finally, we found a significant reducing effect of family-based dignity intervention on AGS (-8.12 ± 1.53 vs. -1.57 ± 1.52, P = 0.01) and its subscales including behavioral (-5.92 ± 0.97 vs. -2.17 ± 0.96, P = 0.04) and emotional (-2.38 ± 0.78 vs. 0.68 ± 0.77, P = 0.03) subscales compared to the control group. However, no significant effect was seen for expressive writing intervention and combined interventions of expressive writing and family-based dignity intervention. In conclusion, family-based dignity intervention may be a safe intervention for relieving anticipatory grief among family caregivers of dying cancer patients. Additional clinical trials are needed to confirm our findings. Registration number: IRCT20210111050010N1. Trial registration date:2021-02-06.
    MeSH term(s) Humans ; Caregivers/psychology ; Respect ; Grief ; Bereavement ; Writing ; Neoplasms
    Language English
    Publishing date 2023-04-01
    Publishing country England
    Document type Randomized Controlled Trial ; Journal Article ; Research Support, Non-U.S. Gov't
    ZDB-ID 2050438-X
    ISSN 1471-244X ; 1471-244X
    ISSN (online) 1471-244X
    ISSN 1471-244X
    DOI 10.1186/s12888-023-04715-x
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  10. Article ; Online: Exploring the safe environment provided by nurses in inpatient psychiatric wards: A mixed-methods study.

    Maddineshat, Maryam / Khodaveisi, Masoud / Kamyari, Naser / Razavi, Mohammadreza / Pourmoradi, Farnaz / Sadeghian, Efat

    Journal of psychiatric and mental health nursing

    2023  Volume 31, Issue 2, Page(s) 257–269

    Abstract: Introduction: Previous research has indicated that community-based mental health services in Iran are restricted, leading to overcrowding in psychiatric wards. This overcrowding has been linked to a range of problems, such as violence, suicide and ... ...

    Abstract Introduction: Previous research has indicated that community-based mental health services in Iran are restricted, leading to overcrowding in psychiatric wards. This overcrowding has been linked to a range of problems, such as violence, suicide and medical errors. Despite the abundance of research on patient safety, there is still a lack of understanding regarding how mental health nurses (MHNs) create a secure environment within these wards.
    Aim: This study focused on exploring a safe environment provided by MHNs in inpatient psychiatric wards at Farshchian (Sina) Hospital, Hamadan, Iran.
    Method: An explanatory mixed-methods study was conducted. Initially, the Safe Environment Scale was distributed to all MHNs (n = 48) working in three wards at Farshchian (Sina) Hospital to evaluate the current status. The scale measured two dimensions, and descriptive statistics were used to analyse the collected data. Subsequently, 20 MHNs were selected for semi-structured interviews using purposeful sampling at the same hospital to interpret and fill gaps in the quantitative findings. The data collected from the interviews were analysed using conventional content analysis.
    Results: The perception and engagement of MHNs in creating a safe environment in the inpatient psychiatric wards were found to be at a medium level, according to the Safe Environment Scale (mean ± SD, 14.67 ± 4.18 and 85.27 ± 17.57, respectively). The qualitative study identified several categories in the results, including 'Hyper-vigilance to safety and security environment', 'Therapeutic communication gap', 'Nurse burnout', 'Staff safety and security need' and 'Environmental safety hazards'.
    Discussion: MHNs employ a hyper-vigilant strategy to guarantee a secure atmosphere within psychiatric wards. However, this approach may inadvertently impede the establishment of a safe environment and even diminish MHNs' perception and involvement in its maintenance.
    Implications for mental health nursing: According to our research, it appears that MHNs need to improve their education and training in order to successfully implement the vigilance strategy for establishing a secure environment. Additionally, it is essential for them to prioritize therapeutic communication with patients, as this plays a vital role in promoting a safe environment within inpatient psychiatric wards.
    MeSH term(s) Humans ; Psychiatric Department, Hospital ; Inpatients ; Psychiatric Nursing/education ; Qualitative Research ; Hospitals
    Language English
    Publishing date 2023-09-23
    Publishing country England
    Document type Journal Article
    ZDB-ID 1328479-4
    ISSN 1365-2850 ; 1351-0126
    ISSN (online) 1365-2850
    ISSN 1351-0126
    DOI 10.1111/jpm.12983
    Database MEDical Literature Analysis and Retrieval System OnLINE

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