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1.
J Cardiothorac Vasc Anesth ; 38(5): 1211-1220, 2024 May.
Artigo em Inglês | MEDLINE | ID: mdl-38453558

RESUMO

Artificial intelligence- (AI) and machine learning (ML)-based applications are becoming increasingly pervasive in the healthcare setting. This has in turn challenged clinicians, hospital administrators, and health policymakers to understand such technologies and develop frameworks for safe and sustained clinical implementation. Within cardiac anesthesiology, challenges and opportunities for AI/ML to support patient care are presented by the vast amounts of electronic health data, which are collected rapidly, interpreted, and acted upon within the periprocedural area. To address such challenges and opportunities, in this article, the authors review 3 recent applications relevant to cardiac anesthesiology, including depth of anesthesia monitoring, operating room resource optimization, and transthoracic/transesophageal echocardiography, as conceptual examples to explore strengths and limitations of AI/ML within healthcare, and characterize this evolving landscape. Through reviewing such applications, the authors introduce basic AI/ML concepts and methodologies, as well as practical considerations and ethical concerns for initiating and maintaining safe clinical implementation of AI/ML-based algorithms for cardiac anesthesia patient care.


Assuntos
Anestesiologia , Inteligência Artificial , Humanos , Aprendizado de Máquina , Algoritmos , Coração
2.
Curr Opin Anaesthesiol ; 27(6): 623-9, 2014 Dec.
Artigo em Inglês | MEDLINE | ID: mdl-25225826

RESUMO

PURPOSE OF REVIEW: The global burden of surgical disease is significant and growing. As a result, the vital role of essential surgical care and safe anesthesia in low-income and middle-income countries is gaining increasing attention. Importantly, vast disparities in access to essential surgery and safe anesthesia exist. In this review, we summarize the current knowledge surrounding the global crisis of inadequate anesthesia capacity and barriers to patient safety in low-income and middle-income countries. RECENT FINDINGS: The major patient safety challenges in low-income and middle-income countries include a lack of well trained anesthesia providers, inadequate infrastructure, equipment, monitors, medicines, oxygen, and blood products, and an absence of meaningful data to guide policies and programs. SUMMARY: Explicit mention of essential surgery and safe anesthesia in the Post-2015 Development Agenda is a critical step forward in advancing the cause of global perioperative care. Tracking surgical and anesthesia outcomes with a metric, such as the perioperative mortality rate, must be required at the hospital, country, and global level to guide improvement of surgical and anesthetic interventions aimed at the burden of surgical disease.


Assuntos
Anestesia , Anestesiologia/métodos , Países em Desenvolvimento , Acessibilidade aos Serviços de Saúde , Segurança do Paciente , Humanos
3.
Sci Rep ; 14(1): 11, 2024 01 02.
Artigo em Inglês | MEDLINE | ID: mdl-38167849

RESUMO

Transesophageal echocardiography (TEE) imaging is a vital tool used in the evaluation of complex cardiac pathology and the management of cardiac surgery patients. A key limitation to the application of deep learning strategies to intraoperative and intraprocedural TEE data is the complexity and unstructured nature of these images. In the present study, we developed a deep learning-based, multi-category TEE view classification model that can be used to add structure to intraoperative and intraprocedural TEE imaging data. More specifically, we trained a convolutional neural network (CNN) to predict standardized TEE views using labeled intraoperative and intraprocedural TEE videos from Cedars-Sinai Medical Center (CSMC). We externally validated our model on intraoperative TEE videos from Stanford University Medical Center (SUMC). Accuracy of our model was high across all labeled views. The highest performance was achieved for the Trans-Gastric Left Ventricular Short Axis View (area under the receiver operating curve [AUC] = 0.971 at CSMC, 0.957 at SUMC), the Mid-Esophageal Long Axis View (AUC = 0.954 at CSMC, 0.905 at SUMC), the Mid-Esophageal Aortic Valve Short Axis View (AUC = 0.946 at CSMC, 0.898 at SUMC), and the Mid-Esophageal 4-Chamber View (AUC = 0.939 at CSMC, 0.902 at SUMC). Ultimately, we demonstrate that our deep learning model can accurately classify standardized TEE views, which will facilitate further downstream deep learning analyses for intraoperative and intraprocedural TEE imaging.


Assuntos
Procedimentos Cirúrgicos Cardíacos , Aprendizado Profundo , Humanos , Ecocardiografia Transesofagiana/métodos , Ecocardiografia/métodos , Valva Aórtica
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