5 results on '"Ansermino MJ"'
Search Results
2. Derivation and internal validation of a data-driven prediction model to guide frontline health workers in triaging children under-five in Nairobi, Kenya.
- Author
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Mawji A, Akech S, Mwaniki P, Dunsmuir D, Bone J, Wiens MO, Görges M, Kimutai D, Kissoon N, English M, and Ansermino MJ
- Abstract
Background: Many hospitalized children in developing countries die from infectious diseases. Early recognition of those who are critically ill coupled with timely treatment can prevent many deaths. A data-driven, electronic triage system to assist frontline health workers in categorizing illness severity is lacking. This study aimed to develop a data-driven parsimonious triage algorithm for children under five years of age. Methods: This was a prospective observational study of children under-five years of age presenting to the outpatient department of Mbagathi Hospital in Nairobi, Kenya between January and June 2018. A study nurse examined participants and recorded history and clinical signs and symptoms using a mobile device with an attached low-cost pulse oximeter sensor. The need for hospital admission was determined independently by the facility clinician and used as the primary outcome in a logistic predictive model. We focused on the selection of variables that could be quickly and easily assessed by low skilled health workers. Results: The admission rate (for more than 24 hours) was 12% (N=138/1,132). We identified an eight-predictor logistic regression model including continuous variables of weight, mid-upper arm circumference, temperature, pulse rate, and transformed oxygen saturation, combined with dichotomous signs of difficulty breathing, lethargy, and inability to drink or breastfeed. This model predicts overnight hospital admission with an area under the receiver operating characteristic curve of 0.88 (95% CI 0.82 to 0.94). Low- and high-risk thresholds of 5% and 25%, respectively were selected to categorize participants into three triage groups for implementation. Conclusion: A logistic regression model comprised of eight easily understood variables may be useful for triage of children under the age of five based on the probability of need for admission. This model could be used by frontline workers with limited skills in assessing children. External validation is needed before adoption in clinical practice., Competing Interests: No competing interests were disclosed., (Copyright: © 2021 Mawji A et al.)
- Published
- 2021
- Full Text
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3. Derivation and internal validation of a data-driven prediction model to guide frontline health workers in triaging children under-five in Nairobi, Kenya.
- Author
-
Mawji A, Akech S, Mwaniki P, Dunsmuir D, Bone J, Wiens MO, Görges M, Kimutai D, Kissoon N, English M, and Ansermino MJ
- Abstract
Background: Many hospitalized children in developing countries die from infectious diseases. Early recognition of those who are critically ill coupled with timely treatment can prevent many deaths. A data-driven, electronic triage system to assist frontline health workers in categorizing illness severity is lacking. This study aimed to develop a data-driven parsimonious triage algorithm for children under five years of age. Methods: This was a prospective observational study of children under-five years of age presenting to the outpatient department of Mbagathi Hospital in Nairobi, Kenya between January and June 2018. A study nurse examined participants and recorded history and clinical signs and symptoms using a mobile device with an attached low-cost pulse oximeter sensor. The need for hospital admission was determined independently by the facility clinician and used as the primary outcome in a logistic predictive model. We focused on the selection of variables that could be quickly and easily assessed by low skilled health workers. Results: The admission rate (for more than 24 hours) was 12% (N=138/1,132). We identified an eight-predictor logistic regression model including continuous variables of weight, mid-upper arm circumference, temperature, pulse rate, and transformed oxygen saturation, combined with dichotomous signs of difficulty breathing, lethargy, and inability to drink or breastfeed. This model predicts overnight hospital admission with an area under the receiver operating characteristic curve of 0.88 (95% CI 0.82 to 0.94). Low- and high-risk thresholds of 5% and 25%, respectively were selected to categorize participants into three triage groups for implementation. Conclusion: A logistic regression model comprised of eight easily understood variables may be useful for triage of children under the age of five based on the probability of need for admission. This model could be used by frontline workers with limited skills in assessing children. External validation is needed before adoption in clinical practice., Competing Interests: No competing interests were disclosed., (Copyright: © 2020 Mawji A et al.)
- Published
- 2020
- Full Text
- View/download PDF
4. Derivation and internal validation of a data-driven prediction model to guide frontline health workers in triaging children under-five in Nairobi, Kenya.
- Author
-
Mawji A, Akech S, Mwaniki P, Dunsmuir D, Bone J, Wiens MO, Görges M, Kimutai D, Kissoon N, English M, and Ansermino MJ
- Abstract
Background: Many hospitalized children in developing countries die from infectious diseases. Early recognition of those who are critically ill coupled with timely treatment can prevent many deaths. A data-driven, electronic triage system to assist frontline health workers in categorizing illness severity is lacking. This study aimed to develop a data-driven parsimonious triage algorithm for children under five years of age. Methods: This was a prospective observational study of children under-five years of age presenting to the outpatient department of Mbagathi Hospital in Nairobi, Kenya between January and June 2018. A study nurse examined participants and recorded history and clinical signs and symptoms using a mobile device with an attached low-cost pulse oximeter sensor. The need for hospital admission was determined independently by the facility clinician and used as the primary outcome in a logistic predictive model. We focused on the selection of variables that could be quickly and easily assessed by low skilled health workers. Results: The admission rate (for more than 24 hours) was 12% (N=138/1,132). We identified an eight-predictor logistic regression model including continuous variables of weight, mid-upper arm circumference, temperature, pulse rate, and transformed oxygen saturation, combined with dichotomous signs of difficulty breathing, lethargy, and inability to drink or breastfeed. This model predicts overnight hospital admission with an area under the receiver operating characteristic curve of 0.88 (95% CI 0.82 to 0.94). Low- and high-risk thresholds of 5% and 25%, respectively were selected to categorize participants into three triage groups for implementation. Conclusion: A logistic regression model comprised of eight easily understood variables may be useful for triage of children under the age of five based on the probability of need for admission. This model could be used by frontline workers with limited skills in assessing children. External validation is needed before adoption in clinical practice., Competing Interests: No competing interests were disclosed., (Copyright: © 2019 Mawji A et al.)
- Published
- 2019
- Full Text
- View/download PDF
5. Paediatric patient family engagement with clinical research at a tertiary care paediatric hospital.
- Author
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Gill C, Ansermino MJ, Sanatani S, Mulpuri K, and Doan Q
- Abstract
Background: Subject recruitment is essential for conducting clinical research; however, there are very few studies evaluating research uptake by families in a paediatric setting., Objectives: To determine how frequently paediatric patients and their families receiving care at a tertiary paediatric hospital participated in research. The secondary objectives were to explore factors that influence patient families' decisions to participate in research and how they perceived their experiences., Methods: A cross-sectional study surveying families of children receiving care in a sample of clinical areas at a tertiary care paediatric hospital in British Columbia was conducted. A self-administered questionnaire was used, and was facilitated by trained interviewers. Descriptive statistics were used to report the proportion of patient families that have previously been invited to participate in research and, among these, the proportion who had agreed to participate. Patient families' perceptions of research and their past experiences therein were also reported., Results: A total of 657 families were approached, of which 543 were enrolled (82.6% response rate). Among the 439 families that had visited the hospital previously, 114 (26.0%) had been invited to participate in research and 99 (87%) had consented to participate. Of these 99 families, only one had a negative experience, and 84 (85%) of these participant families were at least somewhat likely to participate in research again in the future., Conclusions: Only one-quarter of families that had previously visited the hospital had been invited to participate in a research project. Of the families approached previously, there was a high rate of participation and willingness to participate in future research.
- Published
- 2014
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