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1.
Nurs Crit Care ; 2024 Aug 14.
Artigo em Inglês | MEDLINE | ID: mdl-39140297

RESUMO

BACKGROUND: Intensive care unit (ICU) patients are at an increased risk of ocular surface injuries because of various factors such as reduced tear production and impaired protective mechanisms. Despite the significance of ocular care in ICU settings, there is a lack of consensus on effective interventions, leading to inadequate prevention of ocular surface disease (OSD). AIM: This systematic review aimed to assess the effectiveness of nursing eye care in preventing OSD in ICU patients. Secondary objectives included identifying primary risk factors for ocular injuries and examining the most effective preventive methods. STUDY DESIGN: A systematic review following PRISMA guidelines was conducted, encompassing a literature search, article selection, quality assessment and data synthesis. Studies meeting inclusion criteria were observational studies and clinical trials, focusing on adults admitted to ICUs under sedation and receiving mechanical ventilation. RESULTS: Of 3545 initially identified articles, 12 studies met inclusion criteria. These studies involved a total of 1853 participants. Various interventions were assessed, including saline rinsing, lubricating drops, gel lubricants, occlusion with polyethylene dressing, passive blinking and eyelid closure with tape. Moist chamber occlusion every 6 h combined with gel lubrication emerged as the most effective method in preventing OSD. CONCLUSIONS: Gel lubrication along with moist chamber occlusion proved to be the most effective strategy in preventing ocular injuries in ICU patients. Conversely, the routine use of physiological saline was associated with increased severity of corneal lesions. Properly defined protocols and well-trained nursing teams are crucial for reducing ocular injuries in ICU settings. RELEVANCE TO CLINICAL PRACTICE: The findings underscore the importance of implementing evidence-based eye care protocols in ICUs, emphasizing the use of gel lubrication and ocular surface protection to mitigate the risk of OSD. This highlights the need for comprehensive training programmes for ICU nursing staff to ensure optimal ocular care delivery.

2.
BMC Med Inform Decis Mak ; 24(1): 165, 2024 Jun 13.
Artigo em Inglês | MEDLINE | ID: mdl-38872146

RESUMO

BACKGROUND: Pattern mining techniques are helpful tools when extracting new knowledge in real practice, but the overwhelming number of patterns is still a limiting factor in the health-care domain. Current efforts concerning the definition of measures of interest for patterns are focused on reducing the number of patterns and quantifying their relevance (utility/usefulness). However, although the temporal dimension plays a key role in medical records, few efforts have been made to extract temporal knowledge about the patient's evolution from multivariate sequential patterns. METHODS: In this paper, we propose a method to extract a new type of patterns in the clinical domain called Jumping Diagnostic Odds Ratio Sequential Patterns (JDORSP). The aim of this method is to employ the odds ratio to identify a concise set of sequential patterns that represent a patient's state with a statistically significant protection factor (i.e., a pattern associated with patients that survive) and those extensions whose evolution suddenly changes the patient's clinical state, thus making the sequential patterns a statistically significant risk factor (i.e., a pattern associated with patients that do not survive), or vice versa. RESULTS: The results of our experiments highlight that our method reduces the number of sequential patterns obtained with state-of-the-art pattern reduction methods by over 95%. Only by achieving this drastic reduction can medical experts carry out a comprehensive clinical evaluation of the patterns that might be considered medical knowledge regarding the temporal evolution of the patients. We have evaluated the surprisingness and relevance of the sequential patterns with clinicians, and the most interesting fact is the high surprisingness of the extensions of the patterns that become a protection factor, that is, the patients that recover after several days of being at high risk of dying. CONCLUSIONS: Our proposed method with which to extract JDORSP generates a set of interpretable multivariate sequential patterns with new knowledge regarding the temporal evolution of the patients. The number of patterns is greatly reduced when compared to those generated by other methods and measures of interest. An additional advantage of this method is that it does not require any parameters or thresholds, and that the reduced number of patterns allows a manual evaluation.


Assuntos
Mineração de Dados , Humanos , Razão de Chances , Mineração de Dados/métodos , Fatores de Tempo , Reconhecimento Automatizado de Padrão , Atenção à Saúde , Registros Eletrônicos de Saúde
3.
JMIR Med Inform ; 10(8): e32319, 2022 Aug 10.
Artigo em Inglês | MEDLINE | ID: mdl-35947437

RESUMO

BACKGROUND: It is important to exploit all available data on patients in settings such as intensive care burn units (ICBUs), where several variables are recorded over time. It is possible to take advantage of the multivariate patterns that model the evolution of patients to predict their survival. However, pattern discovery algorithms generate a large number of patterns, of which only some are relevant for classification. OBJECTIVE: We propose to use the diagnostic odds ratio (DOR) to select multivariate sequential patterns used in the classification in a clinical domain, rather than employing frequency properties. METHODS: We used data obtained from the ICBU at the University Hospital of Getafe, where 6 temporal variables for 465 patients were registered every day during 5 days, and to model the evolution of these clinical variables, we used multivariate sequential patterns by applying 2 different discretization methods for the continuous attributes. We compared 4 ways in which to employ the DOR for pattern selection: (1) we used it as a threshold to select patterns with a minimum DOR; (2) we selected patterns whose differential DORs are higher than a threshold with regard to their extensions; (3) we selected patterns whose DOR CIs do not overlap; and (4) we proposed the combination of threshold and nonoverlapping CIs to select the most discriminative patterns. As a baseline, we compared our proposals with Jumping Emerging Patterns, one of the most frequently used techniques for pattern selection that utilizes frequency properties. RESULTS: We have compared the number and length of the patterns eventually selected, classification performance, and pattern and model interpretability. We show that discretization has a great impact on the accuracy of the classification model, but that a trade-off must be found between classification accuracy and the physicians' capacity to interpret the patterns obtained. We have also identified that the experiments combining threshold and nonoverlapping CIs (Option 4) obtained the fewest number of patterns but also with the smallest size, thus implying the loss of an acceptable accuracy with regard to clinician interpretation. The best classification model according to the trade-off is a JRIP classifier with only 5 patterns (20 items) that was built using unsupervised correlation preserving discretization and differential DOR in a beam search for the best pattern. It achieves a specificity of 56.32% and an area under the receiver operating characteristic curve of 0.767. CONCLUSIONS: A method for the classification of patients' survival can benefit from the use of sequential patterns, as these patterns consider knowledge about the temporal evolution of the variables in the case of ICBU. We have proved that the DOR can be used in several ways, and that it is a suitable measure to select discriminative and interpretable quality patterns.

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