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  1. Article: A hybrid feature selection algorithm to determine effective factors in predictive model of success rate for in vitro fertilization/intracytoplasmic sperm injection treatment: A cross-sectional study.

    Mehrjerd, Ameneh / Rezaei, Hassan / Eslami, Saeid / Khadem Ghaebi, Nayyere

    International journal of reproductive biomedicine

    2024  Volume 21, Issue 12, Page(s) 995–1012

    Abstract: Background: Previous research has identified key factors affecting in vitro fertilization or intracytoplasmic sperm injection success, yet the lack of a standardized approach for various treatments remains a challenge.: Objective: The objective of ... ...

    Abstract Background: Previous research has identified key factors affecting in vitro fertilization or intracytoplasmic sperm injection success, yet the lack of a standardized approach for various treatments remains a challenge.
    Objective: The objective of this study is to utilize a machine learning approach to identify the principal predictors of success in in vitro fertilization and intracytoplasmic sperm injection treatments.
    Materials and methods: We collected data from 734 individuals at 2 infertility centers in Mashhad, Iran between November 2016 and March 2017. We employed feature selection methods to reduce dimensionality in a random forest model, guided by hesitant fuzzy sets (HFSs). A hybrid approach enhanced predictor identification and accuracy (ACC), as assessed using machine learning metrics such as Matthew's correlation coefficient, runtime, ACC, area under the receiver operating characteristic curve, precision or positive predictive value, recall, and F-Score, demonstrating the effectiveness of combining feature selection methods.
    Results: Our hybrid feature selection method excelled with the highest ACC (0.795), area under the receiver operating characteristic curve (0.72), and F-Score (0.8), while selecting only 7 features. These included follicle-stimulation hormone (FSH), 16Cells, FAge, oocytes, quality of transferred embryos (GIII), compact, and unsuccessful.
    Conclusion: We introduced HFSs in our novel method to select influential features for predicting infertility success rates. Using a multi-center dataset, HFSs improved feature selection by reducing the number of features based on standard deviation among criteria. Results showed significant differences between pregnant and non-pregnant groups for selected features, including FSH, FAge, 16Cells, oocytes, GIII, and compact. We also found a significant correlation between FAge and fetal heart rate and clinical pregnancy rate, with the highest FSH level (31.87%) observed for doses ranging from 10-13 (mIU/ml).
    Language English
    Publishing date 2024-01-25
    Publishing country Iran
    Document type Journal Article
    ZDB-ID 2898387-7
    ISSN 2476-3772 ; 2476-4108
    ISSN (online) 2476-3772
    ISSN 2476-4108
    DOI 10.18502/ijrm.v21i12.15038
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  2. Article ; Online: Internal validation and comparison of predictive models to determine success rate of infertility treatments: a retrospective study of 2485 cycles.

    Mehrjerd, Ameneh / Rezaei, Hassan / Eslami, Saeid / Ratna, Mariam Begum / Khadem Ghaebi, Nayyere

    Scientific reports

    2022  Volume 12, Issue 1, Page(s) 7216

    Abstract: Infertility is a significant health problem and assisted reproductive technologies to treat infertility. Despite all efforts, the success rate of these methods is still low. Also, each of these methods has side effects and costs. Therefore, accurate ... ...

    Abstract Infertility is a significant health problem and assisted reproductive technologies to treat infertility. Despite all efforts, the success rate of these methods is still low. Also, each of these methods has side effects and costs. Therefore, accurate prediction of treatment success rate is a clinical challenge. This retrospective study aimed to internally validate and compare various machine learning models for predicting the clinical pregnancy rate (CPR) of infertility treatment. For this purpose, data from 1931 patients consisting of in vitro fertilization (IVF) or intra cytoplasmic sperm injection (ICSI) (733) and intra uterine insemination (IUI) (1196) treatments were included. Also, no egg or sperm donation data were used. The performance of machine learning algorithms to predict clinical pregnancy were expressed in terms of accuracy, recall, F-score, positive predictive value (PPV), brier score (BS), Matthew correlation coefficient (MCC), and receiver operating characteristic. The significance of the features with CPR and AUCs was evaluated by Student's t test and DeLong's algorithm. Random forest (RF) model had the highest accuracy in the IVF/ICSI treatment. The sensitivity, F1 score, PPV, and MCC of the RF model were 0.76, 0.73, 0.80, and 0.5, respectively. These values for IUI treatment were 0.84, 0.80, 0.82, and 0.34, respectively. The BS was 0.13 and 0.15 for IVF/ICS and IUI, respectively. In addition, the estimated AUCs of the RF model for IVF/ICS and IUI were 0.73 and 0.7, respectively. Some essential features were obtained based on RF ranking for the two datasets, including age, follicle stimulation hormone, endometrial thickness, and infertility duration. The results showed a strong relationship between clinical pregnancy and a woman's age. Also, endometrial thickness and the number of follicles decreased with increasing female age in both treatments.
    MeSH term(s) Female ; Fertilization in Vitro/methods ; Humans ; Infertility/therapy ; Pregnancy ; Pregnancy Rate ; Retrospective Studies ; Sperm Injections, Intracytoplasmic
    Language English
    Publishing date 2022-05-04
    Publishing country England
    Document type Journal Article ; Research Support, Non-U.S. Gov't
    ZDB-ID 2615211-3
    ISSN 2045-2322 ; 2045-2322
    ISSN (online) 2045-2322
    ISSN 2045-2322
    DOI 10.1038/s41598-022-10902-9
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  3. Article ; Online: Telehealth-Based Services During the COVID-19 Pandemic: A Systematic Review of Features and Challenges.

    Khoshrounejad, Farnaz / Hamednia, Mahsa / Mehrjerd, Ameneh / Pichaghsaz, Shima / Jamalirad, Hossein / Sargolzaei, Mahdi / Hoseini, Benyamin / Aalaei, Shokoufeh

    Frontiers in public health

    2021  Volume 9, Page(s) 711762

    Abstract: Background: ...

    Abstract Background:
    MeSH term(s) COVID-19 ; Disease Outbreaks ; Humans ; Pandemics/prevention & control ; SARS-CoV-2 ; Telemedicine ; United States
    Language English
    Publishing date 2021-07-19
    Publishing country Switzerland
    Document type Systematic Review
    ZDB-ID 2711781-9
    ISSN 2296-2565 ; 2296-2565
    ISSN (online) 2296-2565
    ISSN 2296-2565
    DOI 10.3389/fpubh.2021.711762
    Database MEDical Literature Analysis and Retrieval System OnLINE

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  4. Article ; Online: Determination of Cut Off for Endometrial Thickness in Couples with Unexplained Infertility: Trustable AI.

    Mehrjerd, Ameneh / Rezaei, Hassan / Eslami, Saeid / Khadem Ghaebi, Nayyere

    Studies in health technology and informatics

    2017  Volume 294, Page(s) 264–268

    Abstract: Endometrial thickness in assisted reproductive techniques is one of the essential factors in the success of pregnancy. Despite extensive studies on endometrial thickness prediction, research is still needed. We aimed to analyze the impact of endometrial ... ...

    Abstract Endometrial thickness in assisted reproductive techniques is one of the essential factors in the success of pregnancy. Despite extensive studies on endometrial thickness prediction, research is still needed. We aimed to analyze the impact of endometrial thickness on the ongoing pregnancy rate in couples with unexplained infertility. A total of 729 couples with unexplained infertility were included in this study. A random forest model (RFM) and logistic regression (LRM) were used to predict pregnancy. Evaluation of the performance of RFM and LRM was based on classification criteria and ROC curve, Odd Ratio for ongoing Pregnancy by EMT categorized. The results showed that RFM outperformed the LRM in IVF/ICSI and IUI treatments, obtaining the highest accuracy. We obtained a 7.7mm cut-off point for IUI and 9.99 mm for IVF/ICSI treatment. The results showed machine learning is a valuable tool in predicting ongoing pregnancy and is trustable via multicenter data for two treatments. In addition, Endometrial thickness was not statistically significantly different from CPR and FHR in both treatments.
    MeSH term(s) Artificial Intelligence ; Female ; Fertilization in Vitro/methods ; Humans ; Infertility/therapy ; Pregnancy ; Pregnancy Rate ; Reproductive Techniques, Assisted
    Language English
    Publishing date 2017-10-05
    Publishing country Netherlands
    Document type Journal Article ; Multicenter Study
    ISSN 1879-8365
    ISSN (online) 1879-8365
    DOI 10.3233/SHTI220450
    Database MEDical Literature Analysis and Retrieval System OnLINE

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