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Prediction of the Risk of Adverse Clinical Outcomes with Machine Learning Techniques in Patients with Noncommunicable Diseases.
IF 3.5 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-02-03 DOI: 10.1007/s10916-025-02140-z
Alejandro Hernández-Arango, María Isabel Arias, Viviana Pérez, Luis Daniel Chavarría, Fabian Jaimes

Decision-making in chronic diseases guided by clinical decision support systems that use models including multiple variables based on artificial intelligence requires scientific validation in different populations to optimize the use of limited human, financial, and clinical resources in healthcare systems worldwide. This cohort study evaluated three machine learning algorithms-XGBoost, Elastic Net logistic regression, and an Artificial Neural Network-to develop a prediction model for three outcomes: mortality, hospitalization, and emergency department visits. The objective was to build a clinical decision support system for patients with noncommunicable diseases treated at the Alma Mater Hospital complex in Medellín, Colombia. We collected 4845 electronic medical record entries from 5000 patients included in the study. The median age was 71.83 years, with 63.8% women and 29.7% receiving home care. The most prevalent medical conditions were diabetes (52.9%), hypertension (67.2%), dyslipidemia (57.3%), and COPD (19.4%). For mortality prediction, the Elastic Net logistic regression model achieved an AUCROC of 0.883 (95% CI: 0.848-0.917), the XGBoost model reached an AUCROC of 0.896 (95% CI: 0.865-0.927), and the Neural Network achieved 0.886 (95% CI: 0.853-0.916). For hospitalization, the Elastic Net model had an AUCROC of 0.952 (95% CI: 0.937-0.965), the XGBoost model achieved 0.963 (95% CI: 0.952-0.974), and the Neural Network scored 0.932 (95% CI: 0.915-0.948). For emergency department visits, the AUCROC values were 0.980 (95% CI: 0.971-0.987) for Elastic Net, 0.977 (95% CI: 0.967-0.986) for XGBoost, and 0.976 (95% CI: 0.968-0.982) for the neural network. A dashboard was developed to interact with an ensemble risk categorization segmenting patient risk in the cohort to aid in clinical decision-making. A clinical decision support system based on artificial intelligence using electronic medical records possibly can help segmenting the risk in populations with Noncommunicable Diseases for effective decision-making.

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引用次数: 0
Mobile Applications for Longitudinal Data Collection: Web-based Survey Study of Former Intensive Care Patients.
IF 3.5 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-01-31 DOI: 10.1007/s10916-025-02151-w
Denise Molinnus, Anne Mainz, Angelique Kurth, Volker Lowitsch, Matthias Nüchter, Frank Bloos, Thomas Wendt, Philipp Potratz, Gernot Marx, Sven Meister, Johannes Bickenbach

Purpose: Mobile health plays an important role in providing individualized information about the health status of patients. Limited information exists on intensive care unit (ICU) patients with the risk of suffering from the post-intensive care syndrome (PICS), summarizing long-term physical, mental and cognitive impairment. This web-based survey study aims to identify specific needs of former ICU patients for utilizing a newly developed, so called Post-Intensive Care Outcome Surveillance (PICOS) app to collect relevant PICS-related parameters.

Methods: A prototype app was developed following interaction principles for interactive systems of usability engineering. Patients from four different German hospitals were asked about demographics, interaction with technology and their perception of the prototype regarding hedonic motivation, perceived ease of use and performance expectancy.

Results: 123 patients participated in the survey; the majority owned and used smartphones. Nearly half of respondents would seek help from family members or caregivers using the app. There was a difference in affinity for technology for participants who own a smartphone and those who do not, t(116) = - 0.97, p = .335, and no significant difference in affinity for technology whether the participants would like support when using the app or not, t(97) = 1.81, p = .073. The average hedonic motivation for using the app was M = 4.44 (SD = 1.304).

Conclusion: This app prototype was perceived as both beneficial and easy to use, indicating its success among former ICU patients. Due to aging and ongoing health impairments, every second patient would need assistance with the initial use of the app.

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引用次数: 0
Ensuring Medical Device Safety: The Role of Standards Organizations and Regulatory Bodies.
IF 3.5 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-01-25 DOI: 10.1007/s10916-025-02150-x
Andres E Daryanani, Ugwuji N Maduekwe, Pat Baird, Jesse M Ehrenfeld

Medical devices significantly enhance healthcare by integrating advanced technology to improve patient outcomes. Ensuring their safety and reliability requires a delicate balance between innovation and rigorous oversight, managed through the collaborative efforts of standards development organizations, standards accrediting organizations, and regulatory agencies such as the U.S. Food and Drug Administration (FDA) and the European Medicines Agency (EMA). This article explores the historical evolution of medical device regulation, the role of standards organizations, and the impact of regulatory practices on device safety. Highlighting the critical need for stringent regulations, informed by instances where medical devices caused patient harm, we discuss the processes and collaborations between various international standards and regulatory frameworks that ensure device safety and effectiveness. This comprehensive review addresses the complexities of regulatory compliance and standardization, aiming to bridge the knowledge gap among healthcare providers and enhance the implementation of safety standards in medical technology.

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引用次数: 0
Development of Attention-based Prediction Models for All-cause Mortality, Home Care Need, and Nursing Home Admission in Ageing Adults in Spain Using Longitudinal Electronic Health Record Data.
IF 3.5 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-01-25 DOI: 10.1007/s10916-024-02138-z
Lucía A Carrasco-Ribelles, Margarita Cabrera-Bean, Sara Khalid, Albert Roso-Llorach, Concepción Violán

Predicting health-related outcomes can help with proactive healthcare planning and resource management. This is especially important on the older population, an age group growing in the coming decades. Considering longitudinal rather than cross-sectional information from primary care electronic health records (EHRs) can contribute to more informed predictions. In this work, we developed prediction models using longitudinal EHRs to inform resource allocation. In this study, we developed deep-learning-based prognostic models to predict 1-year and 5-year all-cause mortality, nursing home admission, and home care need in people over 65 years old using all the longitudinal information from EHRs. The models included attention mechanisms to increase their transparency. EHRs were drawn from SIDIAP (primary care, Catalonia (Spain)) from 2010-2019. Performance on the test set was compared to that from baseline models using cross-sectional one-year history only. Data from 1,456,052 individuals over 65 years old were considered. Cohen's kappa obtained using longitudinal data was 3.4-fold (1-year all-cause mortality), 10.3-fold (5-year all-cause mortality), 1.1-fold (5-year nursing home admission), and 1.2-fold (5-year home care need) higher than that obtained by the one-year history baseline models. Our models performed better than those not considering longitudinal data, especially when predicting further into the future. However, nursing home admission and home care need in the long term were harder to predict, suggesting their dependence on more abrupt changes. The attention maps helped to understand the predictions, enhancing model transparency. These prediction models can contribute to improve resource allocation in the general population of aging adults.

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引用次数: 0
Evaluating Large Language Models for Automated CPT Code Prediction in Endovascular Neurosurgery.
IF 3.5 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-01-24 DOI: 10.1007/s10916-025-02149-4
Joanna M Roy, D Mitchell Self, Emily Isch, Basel Musmar, Matthews Lan, Kavantissa Keppetipola, Sravanthi Koduri, Mary-Katharine Pontarelli, Stavropoula I Tjoumakaris, M Reid Gooch, Robert H Rosenwasser, Pascal M Jabbour

Large language models (LLMs) have been utilized to automate tasks like writing discharge summaries and operative reports in neurosurgery. The present study evaluates their ability to identify current procedural terminology (CPT) codes from operative reports. Three LLMs (ChatGPT 4.0, AtlasGPT and Gemini) were evaluated in their ability to provide CPT codes for diagnostic or interventional procedures in endovascular neurosurgery at a single institution. Responses were classified as correct, partially correct or incorrect, and the percentage of correctly identified CPT codes were calculated. The Chi-Square test and Kruskal Wallis test were used to compare responses across LLMs. A total of 30 operative notes were used in the present study. AtlasGPT identified CPT codes for 98.3% procedures with partially correct responses, while ChatGPT and Gemini provided partially correct responses for 86.7% and 30% procedures, respectively (P < 0.001). AtlasGPT identified CPT codes correctly in an average of 35.3% of procedures, followed by ChatGPT (35.1%) and Gemini (8.9%) (P < 0.001). A pairwise comparison among three LLMs revealed that AtlasGPT and ChatGPT outperformed Gemini. Untrained LLMs have the ability to identify partially correct CPT codes in endovascular neurosurgery. Training these models could further enhance their ability to identify CPT codes and minimize healthcare expenditure.

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引用次数: 0
Development and Implementation of Automated Referral Triaging System for Spinal Cord Stimulation Procedure in Pain Medicine. 疼痛医学脊髓刺激手术自动转诊分诊系统的开发与实现。
IF 3.5 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-01-21 DOI: 10.1007/s10916-025-02148-5
Lan Jiang, Yu-Li Huang, Jungwei Fan, Christy L Hunt, Jason S Eldrige

Effective referral triaging enhances patient service outcomes, experience and access to care especially for specialized procedures. This study presents the development and implementation of an automated triaging system to predict patients who would benefit from Spinal Cord Stimulation (SCS) procedure for their pain management. The proposed triage system aims to improve the triage process by reducing unnecessary appointments before SCS assessment, ensuring appropriate pain management care. It compares various machine learning techniques for the prediction while addressing the class imbalance and overlap challenges inherent in the data. Both data-level and algorithm-level approaches were explored. Two years of patient data was collected including patient characteristics, diagnosis history, pain symptoms, appointment history, medication history, and concepts from clinical notes extracted using Natural Language Processing. EasyEnsemble with Ada Boosting method, an algorithm-level approach, showed the most promising results. The tenfold validation indicated the average area under curve of 0.82, true positive rate (TPR) of 77.3%, and true negative rate (TNR) of 73.0%. The probability threshold was adjusted to 0.575 to meet practice expectation of 15% or less on false positive rate (FPR). The implementation pipeline for the selected model was designed to be applicable to real clinical settings. The one-year implementation results showed TPR of 64.7% and TNR of 87.2%, which reduced FPR by 12.8% while reduced TPR by 12.6%. The trade-off was acceptable to practice. The proposed triage system demonstrated promising accuracy, leading to the enhancement of scheduling systems, patient care, and the reduction of unnecessary appointments in a pain medicine setting.

有效的转诊分诊可提高患者的服务结果、经验和获得护理的机会,特别是针对专业程序。本研究提出了一个自动分诊系统的开发和实施,以预测哪些患者将受益于脊髓刺激(SCS)手术来控制疼痛。建议的分诊制度,旨在改善分诊程序,减少在评估能力评估前不必要的预约,确保适当的疼痛管理护理。它比较了用于预测的各种机器学习技术,同时解决了数据中固有的类不平衡和重叠挑战。研究了数据级和算法级两种方法。收集了两年的患者数据,包括患者特征、诊断史、疼痛症状、预约史、用药史以及使用自然语言处理提取的临床记录中的概念。EasyEnsemble with Ada Boosting method是一种算法级的方法,显示出最有希望的结果。经10倍验证,平均曲线下面积为0.82,真阳性率77.3%,真阴性率73.0%。概率阈值调整为0.575,以满足对假阳性率(FPR) 15%或更低的实践期望。所选模型的实施流程被设计为适用于实际临床环境。实施1年的结果显示,TPR为64.7%,TNR为87.2%,FPR降低12.8%,TPR降低12.6%。这种交换在实践中是可以接受的。提出的分诊系统证明了有希望的准确性,导致调度系统的加强,病人护理,并减少不必要的预约在疼痛医学设置。
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引用次数: 0
Effectiveness of Mobile Health Intervention in Medication Adherence: a Systematic Review and Meta-Analysis. 移动医疗干预对药物依从性的有效性:一项系统回顾和荟萃分析。
IF 3.5 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-01-17 DOI: 10.1007/s10916-024-02135-2
Sun Kyung Kim, Su Yeon Park, Hye Ri Hwang, Su Hee Moon, Jin Woo Park

Low medication adherence poses a great risk of poor treatment outcomes among patients with chronic diseases. Recently, mobile applications (apps) have been recognized as effective interventions, enabling patients to adhere to their prescriptions. This study aimed to establish the effectiveness of mobile app interventions for medication adherence, affecting features, and dropout rates by focusing on previous randomized controlled trials (RCTs). This study conducted a systematic review and meta-analysis of mobile app interventions targeting medication adherence in patients with chronic diseases. Electronic searches of eight databases were conducted on April 21, 2023, for studies published between 2013 and 2023. Comprehensive meta-analysis software was used to estimate the standardized mean difference (SMD) of pooled outcomes, odds ratios (ORs), and confidence intervals (CIs). Subgroup analysis was applied to investigate and compare the effectiveness of the interventional strategies and their features. The risk of bias of the included RCTs was evaluated by applying the risk of bias tool. Publication bias was examined using the fail-safe N method. Twenty-six studies with 5,174 participants were included (experimental group 2603, control group 2571). The meta-analysis findings showed a positive impact of mobile apps on improving medication adherence (OR = 2.371, SMD = 0.279). The subgroup analysis results revealed greater effectiveness of interventions using interactive strategies (OR = 2.652, SMD = 0.283), advanced reminders (OR = 1.849, SMD = 0.455), data-sharing (OR = 2.404, SMD = 0.346), and pill dispensers (OR = 2.453). The current study found that mobile interventions had significant effects on improving medication adherence. Subgroup analysis showed that the roles of stakeholders in health providers' interactions with patients and developers' understanding of patients and disease characteristics are critical. Future studies should incorporate advanced technology reflecting acceptability and the needs of the target population.

低药物依从性对慢性疾病患者治疗效果不良的风险很大。最近,移动应用程序(app)被认为是有效的干预措施,使患者能够坚持他们的处方。本研究旨在通过关注之前的随机对照试验(RCTs),确定移动应用程序干预药物依从性、影响特征和辍学率的有效性。本研究对针对慢性病患者服药依从性的移动应用干预进行了系统回顾和荟萃分析。2023年4月21日,对8个数据库进行了2013年至2023年间发表的研究的电子检索。采用综合荟萃分析软件估计合并结果的标准化平均差(SMD)、优势比(ORs)和置信区间(ci)。采用亚组分析对不同介入策略的疗效及特点进行调查比较。应用偏倚风险工具评估纳入的rct的偏倚风险。发表偏倚采用故障安全N方法进行检验。共纳入26项研究,5174名受试者(实验组2603人,对照组2571人)。meta分析结果显示,移动应用程序对改善药物依从性有积极影响(OR = 2.371, SMD = 0.279)。亚组分析结果显示,使用互动策略(OR = 2.652, SMD = 0.283)、高级提醒(OR = 1.849, SMD = 0.455)、数据共享(OR = 2.404, SMD = 0.346)和药片分发器(OR = 2.453)的干预措施更有效。目前的研究发现,移动干预对改善药物依从性有显著影响。亚组分析表明,利益相关者在卫生服务提供者与患者互动中的作用以及开发人员对患者和疾病特征的理解至关重要。今后的研究应纳入反映目标人口的可接受性和需要的先进技术。
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引用次数: 0
Influence of Practitioner Dashboard Feedback on Anesthetic Greenhouse Gas Emissions: A Prospective Performance Improvement Investigation. 执业医师仪表板反馈对麻醉温室气体排放的影响:一项前瞻性绩效改进调查。
IF 3.5 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-01-17 DOI: 10.1007/s10916-025-02142-x
Ronald A Kahn, Natalia Egorova, Yuxia Ouyang, Garrett W Burnett, Ira Hofer, David B Wax, Muoi Trinh

Anesthetic gases contribute to global warming. We described a two-year performance improvement project to examine the association of individualized provider dashboard feedback of anesthetic gas carbon dioxide equivalent (CDE20) production and median perioperative fresh gas flows (FGF) during general anesthetics during perioperative management. Using a custom structured query language (SQL) query, hourly CDE20 for each anesthetic gas and median FGF were determined. During the first year, practitioners were not given any feedback on their use of anesthetic gases. During the second year of the study protocol, a commercially available business intelligence platform was used to deliver individualized monthly dashboard of these parameters to each practitioner. Continuous values are expressed as median [first quartile, third quartile]. During the study period, 53,294 patients managed by 79 anesthesiologists were available for analysis. Bivariate analysis revealed an overall decrease in median FGF from 2.0 [1.9, 3.0] liters/minute (l/min) to 1.9 [1.7, 2.0] l/min (p < 0.001). There was a significant decrease in the overall total CDE20 from 5.10 [0,12.3] to 3.59 [0,8.78] kg/hr (p < 0.001). Multivariate analysis demonstrated an initial decrease in monthly practitioner total CDE20 production with the intervention (odds ratio (OR) 0.875 95% confidence interval (CI) 0.809-0.996, p < 0.001) and a faster decrease rate in monthly total CDE20 (OR 0.986, 95% CI 0.976-0,996, p < 0.001). Dashboard distribution initially decreased isoflurane (intervention OR 0.97 95% CI 0.96-0.99, p = 0.001) and N2O (OR 0.82 95% CI 0.73-0.94, p = 0.003) CDE20 production and was associated with a steeper declining rate of isoflurane (OR 0.87, CI 0.79-0.94, p < 0.001) and desflurane (OR 0.9, 0.84-0.97, p = 0.005) CDE20 production. The intervention did not have a significant effect on the monthly rate of decline of sevoflurane or N2O CDE20. The average practitioner FGF decreased by 0.3 l/m (95% confidence interval (CI): -0,011, -0.5, p = 0.002) with dashboard distributions. Dashboard distribution may be an effective tool to decrease FGF as well as components of anesthetic greenhouse gas emissions.

麻醉气体导致全球变暖。我们描述了一个为期两年的绩效改进项目,以检查个性化提供者仪表板反馈麻醉气体二氧化碳当量(CDE20)产生与围手术期管理中位新鲜气体流量(FGF)之间的关系。使用自定义结构化查询语言(SQL)查询,确定每种麻醉气体的每小时CDE20和中位数FGF。在第一年,医生没有得到任何关于麻醉气体使用的反馈。在研究协议的第二年,一个商业上可用的商业智能平台被用来向每个从业者提供这些参数的个性化月度仪表板。连续值表示为中位数[第一四分位数,第三四分位数]。在研究期间,79名麻醉师管理的53,294例患者可用于分析。双变量分析显示,FGF中位数总体下降,从2.0[1.9,3.0]升/分钟(l/min)降至1.9[1.7,2.0]升/分钟(p20),从5.10[0,12.3]降至3.59 [0,8.78]kg/小时(p 20产量)(优势比(OR) 0.875, 95%置信区间(CI) 0.809-0.996, p 20 (OR) 0.986, 95% CI 0.976- 0.9996, p 20 (OR 0.82, 95% CI 0.73-0.94, p = 0.003)), CDE20产量下降幅度更大(OR 0.87, CI 0.79-0.94, p 20产量)。干预对七氟醚或N2O CDE20的月下降率没有显著影响。平均从业人员FGF下降0.3升/米(95%置信区间(CI): -0,011, -0.5, p = 0.002)与仪表板分布。仪表板分布可能是减少FGF以及麻醉温室气体排放成分的有效工具。
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引用次数: 0
Assessing the Efficacy of ChatGPT Prompting Strategies in Enhancing Thyroid Cancer Patient Education: A Prospective Study. 评估ChatGPT提示策略在加强甲状腺癌患者教育中的效果:一项前瞻性研究。
IF 3.5 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-01-17 DOI: 10.1007/s10916-024-02129-0
Qi Xu, Jing Wang, Xiaohui Chen, Jiale Wang, Hanzhi Li, Zheng Wang, Weihan Li, Jinliang Gao, Chen Chen, Yuwan Gao

With the rise of AI platforms, patients increasingly use them for information, relying on advanced language models like ChatGPT for answers and advice. However, the effectiveness of ChatGPT in educating thyroid cancer patients remains unclear. We designed 50 questions covering key areas of thyroid cancer management and generated corresponding responses under four different prompt strategies. These answers were evaluated based on four dimensions: accuracy, comprehensiveness, human care, and satisfaction. Additionally, the readability of the responses was assessed using the Flesch-Kincaid grade level, Gunning Fog Index, Simple Measure of Gobbledygook, and Fry readability score. We also statistically analyzed the references in the responses generated by ChatGPT. The type of prompt significantly influences the quality of ChatGPT's responses. Notably, the "statistics and references" prompt yields the highest quality outcomes. Prompts tailored to a "6th-grade level" generated the most easily understandable text, whereas responses without specific prompts were the most complex. Additionally, the "statistics and references" prompt produced the longest responses while the "6th-grade level" prompt resulted in the shortest. Notably, 87.84% of citations referenced published medical literature, but 12.82% contained misinformation or errors. ChatGPT demonstrates considerable potential for enhancing the readability and quality of thyroid cancer patient education materials. By adjusting prompt strategies, ChatGPT can generate responses that cater to diverse patient needs, improving their understanding and management of the disease. However, AI-generated content must be carefully supervised to ensure that the information it provides is accurate.

随着人工智能平台的兴起,患者越来越多地使用它们来获取信息,依靠ChatGPT等先进的语言模型来获得答案和建议。然而,ChatGPT在甲状腺癌患者教育中的有效性尚不清楚。我们设计了50个问题,涵盖甲状腺癌管理的关键领域,并在四种不同的提示策略下产生相应的回答。这些答案是基于四个方面进行评估的:准确性、全面性、人性化和满意度。此外,使用Flesch-Kincaid等级水平、Gunning Fog指数、Simple Measure of Gobbledygook和Fry可读性评分来评估回答的可读性。我们还对ChatGPT生成的响应中的引用进行了统计分析。提示的类型显著影响ChatGPT回复的质量。值得注意的是,“统计和参考”提示产生了最高质量的结果。针对“六年级水平”量身定制的提示生成了最容易理解的文本,而没有特定提示的回答则是最复杂的。此外,“统计和参考资料”提示产生了最长的回答,而“六年级水平”提示产生了最短的回答。值得注意的是,87.84%的引文引用了已发表的医学文献,但12.82%的引文包含错误信息或错误。ChatGPT在提高甲状腺癌患者教育材料的可读性和质量方面显示出相当大的潜力。通过调整及时的策略,ChatGPT可以产生满足不同患者需求的反应,提高他们对疾病的理解和管理。然而,人工智能生成的内容必须仔细监督,以确保其提供的信息是准确的。
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引用次数: 0
Generative Artificial Intelligence Use in Healthcare: Opportunities for Clinical Excellence and Administrative Efficiency. 生成式人工智能在医疗保健中的应用:临床卓越和管理效率的机会。
IF 3.5 3区 医学 Q1 HEALTH CARE SCIENCES & SERVICES Pub Date : 2025-01-16 DOI: 10.1007/s10916-024-02136-1
Soumitra S Bhuyan, Vidyoth Sateesh, Naya Mukul, Alay Galvankar, Asos Mahmood, Muhammad Nauman, Akash Rai, Kahuwa Bordoloi, Urmi Basu, Jim Samuel

Generative Artificial Intelligence (Gen AI) has transformative potential in healthcare to enhance patient care, personalize treatment options, train healthcare professionals, and advance medical research. This paper examines various clinical and non-clinical applications of Gen AI. In clinical settings, Gen AI supports the creation of customized treatment plans, generation of synthetic data, analysis of medical images, nursing workflow management, risk prediction, pandemic preparedness, and population health management. By automating administrative tasks such as medical documentations, Gen AI has the potential to reduce clinician burnout, freeing more time for direct patient care. Furthermore, application of Gen AI may enhance surgical outcomes by providing real-time feedback and automation of certain tasks in operating rooms. The generation of synthetic data opens new avenues for model training for diseases and simulation, enhancing research capabilities and improving predictive accuracy. In non-clinical contexts, Gen AI improves medical education, public relations, revenue cycle management, healthcare marketing etc. Its capacity for continuous learning and adaptation enables it to drive ongoing improvements in clinical and operational efficiencies, making healthcare delivery more proactive, predictive, and precise.

生成式人工智能(Gen AI)在医疗保健领域具有变革性潜力,可增强患者护理、个性化治疗方案、培训医疗保健专业人员和推进医学研究。本文探讨了人工智能的各种临床和非临床应用。在临床环境中,Gen AI支持定制治疗计划的创建、合成数据的生成、医学图像的分析、护理工作流程管理、风险预测、流行病防范和人口健康管理。通过自动化医疗文件等管理任务,Gen AI有可能减少临床医生的倦怠,腾出更多时间直接照顾病人。此外,Gen AI的应用可以通过提供实时反馈和手术室某些任务的自动化来提高手术效果。合成数据的生成为疾病和模拟的模型训练开辟了新的途径,增强了研究能力,提高了预测准确性。在非临床环境中,通用人工智能改善了医学教育、公共关系、收入周期管理、医疗保健营销等。它的持续学习和适应能力使其能够推动临床和运营效率的持续改进,使医疗保健服务更加主动、更具预测性和更精确。
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引用次数: 0
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Journal of Medical Systems
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