Computer

计算机
  • 文章类型: Journal Article
    目的:提出一种卷积神经网络(EmbNet),用于在计算机断层扫描肺动脉造影(CTPA)扫描上自动检测肺栓塞,并评估其诊断性能。
    方法:本研究纳入了2019年1月至2021年12月之间的305次连续CTPA扫描(142次用于培训,163用于内部验证),来自公共数据集的250次CTPA扫描用于外部验证。该框架包括用于分割肺血管的预处理步骤和用于检测栓子的EmbNet。栓子分为三个基于位置的亚组进行详细评估:中央动脉,叶分支,和外围区域。真相是由三名放射科医生建立的。
    结果:EmbNet的每扫描电平灵敏度,特异性,阳性预测值(PPV),阴性预测值为90.9%,75.4%,48.4%,和97.0%(内部验证)和88.0%,70.5%,42.7%,和95.9%(外部验证)。在每个栓子水平上,EmbNet的总体灵敏度和PPV分别为86.0%和61.3%(内部验证),83.5%和57.5%(外部验证)。中心栓塞的敏感性和PPV分别为89.7%和52.0%(内部验证),和94.4%和43.0%(外部验证);叶栓子分别为95.2%和76.9%(内部验证),和93.5%和72.5%(外部验证);和周围栓塞的82.6%和61.7%(内部验证),80.2%和59.4%(外部验证)。平均假阳性率为0.45假栓塞/扫描(内部验证)和0.69假栓塞/扫描(外部验证)。
    结论:EmbNet在栓子位置提供了高灵敏度,提示其在临床实践中初步筛查的潜在效用。
    OBJECTIVE: To propose a convolutional neural network (EmbNet) for automatic pulmonary embolism detection on computed tomography pulmonary angiogram (CTPA) scans and to assess its diagnostic performance.
    METHODS: 305 consecutive CTPA scans between January 2019 and December 2021 were enrolled in this study (142 for training, 163 for internal validation), and 250 CTPA scans from a public dataset were used for external validation. The framework comprised a preprocessing step to segment the pulmonary vessels and the EmbNet to detect emboli. Emboli were divided into three location-based subgroups for detailed evaluation: central arteries, lobar branches, and peripheral regions. Ground truth was established by three radiologists.
    RESULTS: The EmbNet\'s per-scan level sensitivity, specificity, positive predictive value (PPV), and negative predictive value were 90.9%, 75.4%, 48.4%, and 97.0% (internal validation) and 88.0%, 70.5%, 42.7%, and 95.9% (external validation). At the per-embolus level, the overall sensitivity and PPV of the EmbNet were 86.0% and 61.3% (internal validation), and 83.5% and 57.5% (external validation). The sensitivity and PPV of central emboli were 89.7% and 52.0% (internal validation), and 94.4% and 43.0% (external validation); of lobar emboli were 95.2% and 76.9% (internal validation), and 93.5% and 72.5% (external validation); and of peripheral emboli were 82.6% and 61.7% (internal validation), and 80.2% and 59.4% (external validation). The average false positive rate was 0.45 false emboli per scan (internal validation) and 0.69 false emboli per scan (external validation).
    CONCLUSIONS: The EmbNet provides high sensitivity across embolus locations, suggesting its potential utility for initial screening in clinical practice.
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  • 文章类型: Journal Article
    背景:ICU再入院和出院后死亡率构成重大挑战。以前的研究使用EHR和机器学习模型,但主要集中在结构化数据上。护理记录包含关键的非结构化信息,但是它们的使用具有挑战性。自然语言处理(NLP)可以从临床文本中提取结构化特征。这项研究提出了关键护理描述提取器(CNDE)来预测ICU出院后的死亡率,并通过分析电子护理记录来识别计划外再入院的高风险患者。
    目的:开发了一种能够感知护理记录的深度神经网络(NurnaNet),结合生物临床医学预训练语言模型(BioClinicalBERT)分析MIMICIII数据集中的电子健康记录(EHR),以预测患者在6个月和2年内的死亡风险.
    方法:采用队列和系统开发设计。
    方法:基于从MIMIC-III中提取的数据,在2001年至2012年美国危重病数据库中,对结果进行了分析.
    方法:我们使用MIMIC数据集的入院时间和出生日期信息计算患者年龄。18岁以下或89岁以上的患者,或是死在医院的人,被排除在外。我们分析了ICU住院患者的16,973份护理记录。
    方法:我们开发了一种称为关键护理描述提取器(CNDE)的技术,从文本中提取关键内容。我们使用对数似然比来提取关键词并结合BioClinicalBERT。我们预测出院患者六个月和两年后的生存率,并使用精度评估模型的性能,召回,F1得分,接收器工作特性曲线(ROC曲线),曲线下面积(AUC),和精度-召回曲线(PR曲线)。
    结果:研究结果表明,NurnaNet在六个月和两年内获得了良好的F1得分(0.67030,0.70874)。与单独使用BioClinicalBERT相比,六个月和两年内的预测表现分别提高了2.05%和1.08%,分别。
    结论:CNDE可以有效减少长格式记录并提取关键内容。NurnaNet在分析护理记录数据方面具有良好的F1评分,这有助于识别患者出院后的死亡风险,并尽快调整相关医疗的定期随访和治疗计划。
    BACKGROUND: ICU readmissions and post-discharge mortality pose significant challenges. Previous studies used EHRs and machine learning models, but mostly focused on structured data. Nursing records contain crucial unstructured information, but their utilization is challenging. Natural language processing (NLP) can extract structured features from clinical text. This study proposes the Crucial Nursing Description Extractor (CNDE) to predict post-ICU discharge mortality rates and identify high-risk patients for unplanned readmission by analyzing electronic nursing records.
    OBJECTIVE: Developed a deep neural network (NurnaNet) with the ability to perceive nursing records, combined with a bio-clinical medicine pre-trained language model (BioClinicalBERT) to analyze the electronic health records (EHRs) in the MIMIC III dataset to predict the death of patients within six month and two year risk.
    METHODS: A cohort and system development design was used.
    METHODS: Based on data extracted from MIMIC-III, a database of critically ill in the US between 2001 and 2012, the results were analyzed.
    METHODS: We calculated patients\' age using admission time and date of birth information from the MIMIC dataset. Patients under 18 or over 89 years old, or who died in the hospital, were excluded. We analyzed 16,973 nursing records from patients\' ICU stays.
    METHODS: We have developed a technology called the Crucial Nursing Description Extractor (CNDE), which extracts key content from text. We use the logarithmic likelihood ratio to extract keywords and combine BioClinicalBERT. We predict the survival of discharged patients after six months and two years and evaluate the performance of the model using precision, recall, the F1-score, the receiver operating characteristic curve (ROC curve), the area under the curve (AUC), and the precision-recall curve (PR curve).
    RESULTS: The research findings indicate that NurnaNet achieved good F1-scores (0.67030, 0.70874) within six months and two years. Compared to using BioClinicalBERT alone, there was an improvement in performance of 2.05 % and 1.08 % for predictions within six months and two years, respectively.
    CONCLUSIONS: CNDE can effectively reduce long-form records and extract key content. NurnaNet has a good F1-score in analyzing the data of nursing records, which helps to identify the risk of death of patients after leaving the hospital and adjust the regular follow-up and treatment plan of relevant medical care as soon as possible.
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  • 文章类型: Journal Article
    目的是研究累积负荷和软骨周转生物标志物与膝骨关节炎软骨2年变化的关系。从Kellgren-Lawrence(KL)1至3级的参与者中,根据24个月(基线)和48个月的磁共振图像计算软骨厚度和横向弛豫时间(T2)。累积负荷是老年人身体活动量表(PASE)和体重指数(BMI)的交互项。在基线时收集血清软骨寡聚基质蛋白(COMP)和II型胶原的硝化形式(Coll2-1NO2)。多元回归(针对基线年龄进行了调整,KL级,软骨措施,疼痛,合并症)评估了累积负荷和生物标志物与2年变化的关系。在406名参与者(63.7(8.7)年)中,生物标志物与累积负荷的相互作用弱预测了2年软骨变化:(i)COMP×累积负荷解释了胫骨内侧厚度变化(R2增加了0.062至0.087,p<0.001);(ii)Coll2-1NO2×累积负荷解释了股骨中央T2变化(R2增加了0.177至0.210,p<0.001);(iii)Coll2-1NO2×累积负荷解释了胫骨外侧T2变化(0.001,基线时的中度COMP或Coll2-1NO2表现出保护性。高COMP或Coll2-1NO2,特别是高BMI和低PASE,与软骨恶化有关。软骨更新生物标志物的中等血清浓度,在高和低体力活动中,与维持2年以上的软骨结果相关。总之,高浓度的软骨周转生物标志物,特别是高BMI和低体力活动,与2年内膝关节软骨变薄和T2增加有关。要点•与质量较差的软骨相比,质量较高的软骨能够更好地耐受较大的累积负荷。•参加骨关节炎倡议生物标志物联盟项目的参与者中,累积负荷暴露及其与软骨周转生物标志物的相互作用与膝关节软骨的2年变化弱相关.•这些发现表明软骨更新是改变膝关节OA中负荷暴露与软骨损失之间关系的因素。
    The purpose was to investigate relationships of cumulative load and cartilage turnover biomarkers with 2-year changes in cartilage in knee osteoarthritis. From participants with Kellgren-Lawrence (KL) grades of 1 to 3, cartilage thickness and transverse relaxation time (T2) were computed from 24-month (baseline) and 48-month magnetic resonance images. Cumulative load was the interaction term of the Physical Activity Scale for the Elderly (PASE) and body mass index (BMI). Serum cartilage oligomeric matrix protein (COMP) and the nitrated form of type II collagen (Coll2-1 NO2) were collected at baseline. Multiple regressions (adjusted for baseline age, KL grade, cartilage measures, pain, comorbidity) evaluated the relationships of cumulative load and biomarkers with 2-year changes. In 406 participants (63.7 (8.7) years), interactions of biomarkers with cumulative load weakly predicted 2-year cartilage changes: (i) COMP × cumulative load explained medial tibia thickness change (R2 increased 0.062 to 0.087, p < 0.001); (ii) Coll2-1 NO2 × cumulative load explained central medial femoral T2 change (R2 increased 0.177 to 0.210, p < 0.001); and (iii) Coll2-1 NO2 × cumulative load explained lateral tibia T2 change (R2 increased 0.166 to 0.188, p < 0.001). Moderate COMP or Coll2-1 NO2 at baseline appeared protective. High COMP or Coll2-1 NO2, particularly with high BMI and low PASE, associated with worsening cartilage. Moderate serum concentrations of cartilage turnover biomarkers, at high and low physical activity, associated with maintained cartilage outcomes over 2 years. In conclusion, high concentrations of cartilage turnover biomarkers, particularly with high BMI and low physical activity, associated with knee cartilage thinning and increasing T2 over 2 years. Key Points • Higher quality cartilage may be better able to tolerate a larger cumulative load than poor quality cartilage. • Among participants enrolled in the Osteoarthritis Initiative Biomarkers Consortium Project, a representation of cumulative load exposure and its interaction with cartilage turnover biomarkers were weakly related with 2-year change in knee cartilage. • These findings suggest that cartilage turnover is a factor that modifies the relationship between loading exposure and cartilage loss in knee OA.
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  • 文章类型: Journal Article
    圆锥角膜(KC)的诊断方法和手术技术的进步增加了非侵入性治疗选择。KC的成功手术计划涉及临床科学的结合,经验证据,和外科专业知识。评估疾病进展至关重要,如果进展是渐进的,那么停止进展应该是重点。虽然外科医生过去仅仅依靠经验来决定手术方法,比较主要因素的网络,比如视力,跨研究可以帮助他们为每位患者选择最合适的治疗方法并达到最佳效果。细致的制表方法便于解释,强调根据每个患者的病情和疾病阶段选择正确的手术和康复方法的重要性。我们详细介绍了一项综合网络荟萃分析的结果,比较了在疾病的相同阶段,各种联合治疗性屈光治疗对KC的有效性。跨越四个不同的随访间隔。此外,综合分析表明,对于具有最佳矫正视力(BCVA)的角膜,如果疾病分期不超过3期,则将有晶状体眼人工晶状体与角膜内环形节段(ICRS)和角膜交联(CXL)相结合可提供最佳治疗方法.对于不规则角膜,尽管最初的随访显示BCVA与表面烧蚀有显著差异,长期随访建议将表面消融与ICRS和CXL相结合,尤其是在更高的阶段。
    Advancements in diagnostic methods and surgical techniques for keratoconus (KC) have increased non-invasive treatment options. Successful surgical planning for KC involves a combination of clinical science, empirical evidence, and surgical expertise. Assessment of disease progression is crucial, and halting the progression should be the focus if it is progressive. While surgeons used to rely on experience alone to decide the surgical method, comparing the network of primary factors, such as visual acuity, across studies can help them choose the most appropriate treatments for each patient and achieve optimal outcomes. Meticulous tabulation methods facilitate interpretation, highlighting the importance of selecting the correct surgical and rehabilitation approach based on each patient\'s condition and stage of the disease. We detail the outcomes of a comprehensive network meta-analysis comparing the effectiveness of various combined therapeutic refractive treatments for KC at identical stages of the disease, spanning 4 distinct follow-up intervals. Additionally, the comprehensive analysis suggests that for corneas with optimal best corrected visual acuity (BCVA) preoperatively (classified as regular), combining phakic intraocular lenses with intracorneal ring segments (ICRS) and corneal cross-linking (CXL) could offer the best therapeutic approach provided the disease stage does not exceed stage 3. For irregular corneas, although initial follow-ups show a significant difference in BCVA with surface ablation, longer-term follow-ups recommend combining surface ablation with ICRS and CXL, especially at higher stages.
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  • 文章类型: Journal Article
    本文研究了增强现实(AR)技术在大学生英语翻译教学中的融入,强调创新教学方法在提高学生翻译技能和学习经验方面的关键作用。为解决英语翻译教学兴趣不足的问题,本文通过问卷调查初步评估了学习英语翻译的目的和意义,阐明英语习得中遇到的挑战。随后,坚持AR原则,构思并开发了一个植根于AR技术的教学演示平台,与英语翻译教学错综复杂。该平台可以解决英语学习中的问题,如课程理解不足,教学资源利用率低,和教练缺乏经验。这项研究最终导致对调查结果的分析,其中研究了利用研究平台的学生与接受传统教学方法的学生之间翻译能力的定量差异。研究结果强调了基于AR的研究平台对提高学生翻译水平的积极影响。AR平台提高了学习者在学习过程中的参与度,有助于构建一个强大的知识框架,并提高整体学习成果。该平台为教育工作者提供了优化实验课程和提高教学标准的机会。论文的结果为学习者提供了新的教学场景,提出其他技术学科的技术方案,为新一代实验演示平台提供理论基础和应用模型。
    This paper investigates the integration of augmented reality (AR) technology into English translation teaching for college students, emphasizing the pivotal role of innovative teaching methods in enhancing students\' translation skills and learning experiences. To address the issue of insufficient interest in English translation teaching, the paper initially assesses the purpose and significance of learning English translation through a questionnaire survey, elucidating challenges encountered in English language acquisition. Subsequently, adhering to AR principles, a teaching demonstration platform rooted in AR technology is conceived and developed, intricately aligned with English translation instruction. The platform serves as a solution to issues in English learning, such as inadequate course comprehension, low utilization of teaching resources, and instructors\' lack of experience. The research culminates in the analysis of survey results, wherein the quantitative disparities in translation ability between students utilizing the research platform and those subjected to traditional teaching methods are examined. The findings underscore the positive impact of the AR-based research platform on improving students\' translation proficiency. The AR platform heightens learners\' engagement in the learning process, contributes to constructing a robust knowledge framework, and enhances overall learning outcomes. The platform offers educators opportunities to optimize experimental courses and elevate teaching standards. The paper\'s outcomes present novel pedagogical scenarios for learners, propose technical solutions for other technical disciplines and furnish a theoretical foundation and application model for a new generation of experimental demonstration platforms.
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  • 文章类型: Journal Article
    研究表明,数字鸿沟影响学生的教育成就跨种族和族裔群体。鉴于此,该研究调查了在COVID-19大流行期间,在美国家庭脉搏调查(HPS)中,家庭技术接入对学生学习时间的影响,由美国人口普查局进行,并于2020年8月19日至2021年3月29日管理,用于分析。我们使用主成分分析(PCA)计算技术访问的综合指数。对于经验模型,这项研究采用了Tobit回归模型。结果表明,基于PCA的全样本技术访问估计指数约为0.92,表明访问水平较高。然而,按种族/民族划分的数据显示,代表白人的学生平均约为0.93、0.89、0.90、0.94和0.89,黑色,西班牙裔,亚洲,和其他种族,分别。这意味着样本中的家庭获得技术的强度在亚洲和白人学生中更高,其次是西班牙裔,黑色,和其他种族的顺序。基于Tobit回归模型的技术获取对COVID-19期间学生学习时间的估计影响显示,整个样本增加了约3.1个单位点。进一步的分析揭示了使用该技术会影响种族和种族群体学习时间的差异。例如,我们发现,在怀特中,获得技术显著增加了约3.5、1.6、2.2和3.4个单位点的学习时间,黑色,西班牙裔,亚洲学生,分别。所观察到的获取技术对学习时间的不同影响进一步凸显了美国社会数字鸿沟中的种族差异,这揭示了在COVID-19大流行期间,获得技术如何对学生的学习时间产生不成比例的影响。
    Studies have shown that the digital divide affects students\' educational achievement across racial and ethnic groups. In light of this, the study investigates the effect of technology access at home on student learning hours during the COVID-19 pandemic and across racial and ethnic groups in the U.S. The Household Pulse Surveys (HPS), conducted by the United States Census Bureau and administered from August 19, 2020, to March 29, 2021, were used for the analysis. We compute a composite index of technology access using the principal component analysis (PCA). And for the empirical model, the study employed a Tobit regression model. The result shows that the estimated index of technology access based on PCA for the whole sample is about 0.92, indicating a higher level of access. However, the breakdown by race/ethnicity shows an average of about 0.93, 0.89, 0.90, 0.94, and 0.89 for students representing White, Black, Hispanic, Asia, and other races, respectively. This means the intensity at which households in the sample have access to technology is higher among the Asian and White students, followed by Hispanic, Black, and other races in that order. The estimated effect of technology access on the student learning hours during COVID-19 based on the Tobit regression model shows about a 3.1 unit points increase over the whole sample. And further analysis reveals variation at which access to the technology impacts learning hours across race and ethnicity groups. For example, we find that access to technology significantly increased learning hours by about 3.5, 1.6, 2.2, and 3.4 unit points among White, Black, Hispanic, and Asian students, respectively. The observed differing effect of access to technology on learning hours further highlights the racial disparities in American society\'s digital divide, which reveal how access to technology disproportionately impacts student learning hours during the COVID-19 pandemic across race and ethnicity.
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  • 文章类型: Journal Article
    2019年冠状病毒病(COVID-19)大流行继续对公共卫生部门构成重大挑战,包括阿拉伯联合酋长国(UAE)。这项研究的目的是评估各种深度学习模型在预测阿联酋境内COVID-19病例中的效率和准确性。从而帮助国家的公共卫生当局在知情的决策。
    这项研究利用了一个全面的数据集,包括确诊的COVID-19病例,人口统计,和社会经济指标。几种先进的深度学习模型,包括长短期记忆(LSTM),双向LSTM,卷积神经网络(CNN)CNN-LSTM,多层感知器,和递归神经网络(RNN)模型,进行了培训和评估。还实施了贝叶斯优化来微调这些模型。
    评估框架显示,每个模型都表现出不同的预测准确性和精度水平。具体来说,即使没有优化,RNN模型也优于其他架构。进行了全面的预测和透视分析,以仔细检查COVID-19数据集。
    这项研究通过提供重要见解,使阿联酋的公共卫生当局能够部署有针对性的数据驱动的干预措施,从而超越了学术界限。RNN模型,这被认为是最可靠和准确的具体背景,可以显著影响公共卫生决策。此外,这项研究的更广泛意义验证了深度学习技术处理复杂数据集的能力,从而为公共卫生和医疗保健部门的预测准确性提供了变革性的潜力。
    BACKGROUND: The coronavirus disease 2019 (COVID-19) pandemic continues to pose significant challenges to the public health sector, including that of the United Arab Emirates (UAE). The objective of this study was to assess the efficiency and accuracy of various deep-learning models in forecasting COVID-19 cases within the UAE, thereby aiding the nation\'s public health authorities in informed decision-making.
    METHODS: This study utilized a comprehensive dataset encompassing confirmed COVID-19 cases, demographic statistics, and socioeconomic indicators. Several advanced deep learning models, including long short-term memory (LSTM), bidirectional LSTM, convolutional neural network (CNN), CNN-LSTM, multilayer perceptron, and recurrent neural network (RNN) models, were trained and evaluated. Bayesian optimization was also implemented to fine-tune these models.
    RESULTS: The evaluation framework revealed that each model exhibited different levels of predictive accuracy and precision. Specifically, the RNN model outperformed the other architectures even without optimization. Comprehensive predictive and perspective analytics were conducted to scrutinize the COVID-19 dataset.
    CONCLUSIONS: This study transcends academic boundaries by offering critical insights that enable public health authorities in the UAE to deploy targeted data-driven interventions. The RNN model, which was identified as the most reliable and accurate for this specific context, can significantly influence public health decisions. Moreover, the broader implications of this research validate the capability of deep learning techniques in handling complex datasets, thus offering the transformative potential for predictive accuracy in the public health and healthcare sectors.
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  • 文章类型: Journal Article
    目的:使用会议挑战格式来比较基于机器学习的γ-氨基丁酸(GABA)编辑的磁共振波谱(MRS)重建模型,该模型使用通常在完整扫描期间获得的瞬态的四分之一。
    方法:有三条轨迹:轨迹1:模拟数据,轨道2:与体内数据相同的采集参数,和轨道3:具有体内数据的不同采集参数。均方误差,信噪比,线宽,并使用提出的形状得分度量来量化模型性能。挑战组织者提供了对基线模型的开放访问,模拟无噪声数据,添加合成噪声的指南,和体内数据。
    结果:比较了三个提交。协方差矩阵卷积神经网络模型对于轨道1最为成功。在频谱图数据表示上运行的视觉变压器模型对于轨道2和3最为成功。具有80个瞬态的深度学习(DL)重建实现了等效或更好的SNR,与传统的320瞬态重建相比,线宽和拟合误差。然而,一些DL模型优化了线宽和信噪比,而实际上没有提高整体频谱质量,表明需要更稳健的指标。
    结论:基于DL的重建管道有望减少GABA编辑的MRS所需的瞬态数量。
    OBJECTIVE: Use a conference challenge format to compare machine learning-based gamma-aminobutyric acid (GABA)-edited magnetic resonance spectroscopy (MRS) reconstruction models using one-quarter of the transients typically acquired during a complete scan.
    METHODS: There were three tracks: Track 1: simulated data, Track 2: identical acquisition parameters with in vivo data, and Track 3: different acquisition parameters with in vivo data. The mean squared error, signal-to-noise ratio, linewidth, and a proposed shape score metric were used to quantify model performance. Challenge organizers provided open access to a baseline model, simulated noise-free data, guides for adding synthetic noise, and in vivo data.
    RESULTS: Three submissions were compared. A covariance matrix convolutional neural network model was most successful for Track 1. A vision transformer model operating on a spectrogram data representation was most successful for Tracks 2 and 3. Deep learning (DL) reconstructions with 80 transients achieved equivalent or better SNR, linewidth and fit error compared to conventional 320 transient reconstructions. However, some DL models optimized linewidth and SNR without actually improving overall spectral quality, indicating a need for more robust metrics.
    CONCLUSIONS: DL-based reconstruction pipelines have the promise to reduce the number of transients required for GABA-edited MRS.
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  • 文章类型: Journal Article
    TA2Viewer是一个开放访问,基于Web的应用程序和数据库,用于在计算机或移动设备上浏览解剖术语和相关医疗信息(https://ta2viewer。openanaboy.org/)。它包含了由联邦国际解剖学术语计划(FIPAT)出版的第二版解剖学术语(TA2)的官方数字版本,并由国际解剖学协会联合会(IFAA)和其他协会通过。它提供了拉丁语和英语命名法的动态和交互式视图。术语的组织层次结构可以通过使用可滚动、可扩展,和可折叠的结构化列表。交互式搜索包含TA2官方术语,同义词,和相关术语。TA2Viewer还使用TA2术语信息来方便地访问其他在线资源,包括谷歌网络和图片搜索,PubMed,和Radiopaedia.使用维基数据的交叉引用,由维基百科社区提供,TA2Viewer提供了维基百科的链接,Uberon,UMLS,FMA,MeSH,Neuronames,《格雷解剖学》第20版公共领域,和其他数据源。此外,它可以选择使用Wikidata的非官方同义词来提供数百种语言的多语言术语搜索。通过利用TA2,TA2Viewer可以免费访问精选的解剖学术语,并作为在线解剖学知识的索引。
    TA2Viewer is an open-access, web-based application and database for browsing anatomical terms and associated medical information on a computer or mobile device (https://ta2viewer.openanatomy.org/). It incorporates the official digital version of the second edition of Terminologia Anatomica (TA2) as published by the Federative International Programme for Anatomical Terminology (FIPAT), and adopted by the International Federation of Associations of Anatomists (IFAA) and other associations. It provides a dynamic and interactive view of the Latin and English nomenclatures. The organizational hierarchy of the terminology can be navigated by using a scrollable, expandable, and collapsible structured listing. Interactive search includes the official TA2 terms, synonyms, and related terms. TA2Viewer also uses TA2 term information to provide convenient access to other online resources, including Google web and image searches, PubMed, and Radiopaedia. Using cross-references from Wikidata, which were provided by the Wikipedia community, TA2Viewer offers links to Wikipedia, UBERON, UMLS, FMA, MeSH, NeuroNames, the public domain 20th edition of Gray\'s Anatomy, and other data sources. In addition, it can optionally use unofficial synonyms from Wikidata to provide multilingual term searches in hundreds of languages. By leveraging TA2, TA2Viewer provides free access to a curated anatomical nomenclature and serves as an index of online anatomical knowledge.
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  • 文章类型: Journal Article
    人工智能的新发展,特别是在圆锥角膜的早期发现和管理方面有希望的结果,在过去的几十年里,已经有利地改变了这种疾病的自然史。人工智能在不同机器中的特征,如眼前节光学相干断层扫描,飞秒激光技术提高了安全性,精度,有效性,以及圆锥角膜治疗方式的可预测性(从隐形眼镜到角膜移植术)。这些在人工智能中根深蒂固的选择已经在进行中,允许眼科医生以最无创的方式治疗疾病。
    本研究全面描述了考虑机器学习策略的圆锥角膜的所有治疗方式。
    多维综合系统叙事回顾。
    在五个主要的电子数据库(PubMed,Scopus,WebofScience,Embase,和Cochrane),没有语言和时间或学习类型的限制。之后,通过根据主要网格关键词筛选标题和摘要来选择符合条件的文章.对于可能符合条件的文章,并对全文进行了审查。
    人工智能在圆锥角膜诊断和临床管理方面显示出希望,跨越早期检测(特别是在亚临床病例中),术前筛查,角膜屈光性手术后的扩张预测,指导手术决策。大多数研究采用了单独的机器学习算法,而次要研究评估了多种算法,这些算法评估了各种圆锥角膜分期和管理策略之间的关联。最后但并非最不重要的,AI已被证明可有效指导角膜内环形节段在圆锥角膜中的植入并预测手术结果。
    机器学习模型在圆锥角膜管理中的有效和广泛的临床翻译是圆锥角膜患者更好的视觉表现的潜在未来方法的关键目标。
    该文章已通过PROSPERO注册,预期注册的系统评价的国际数据库,ID:CRD42022319338。
    圆锥角膜:从基础到未来人工智能近年来改变了我们治疗圆锥角膜的方式。这项研究检查了许多可用的圆锥角膜疗法,包括手术和隐形眼镜佩戴,以及人工智能如何提高这些程序的安全性和准确性。我们梳理了许多论文来找到这些数据。为了取得最好的结果,应该评估几个参数和方法。根据研究,眼睛扫描中的一些元素比其他元素更有用。使用人工智能背后的想法是帮助患者更好地看到并更有效地治疗圆锥角膜。
    UNASSIGNED: New developments in artificial intelligence, particularly with promising results in early detection and management of keratoconus, have favorably altered the natural history of the disease over the last few decades. Features of artificial intelligence in different machine such as anterior segment optical coherence tomography, and femtosecond laser technique have improved safety, precision, effectiveness, and predictability of treatment modalities of keratoconus (from contact lenses to keratoplasty techniques). These options ingrained in artificial intelligence are already underway and allow ophthalmologist to approach disease in the most non-invasive way.
    UNASSIGNED: This study comprehensively describes all of the treatment modalities of keratoconus considering machine learning strategies.
    UNASSIGNED: A multidimensional comprehensive systematic narrative review.
    UNASSIGNED: A comprehensive search was done in the five main electronic databases (PubMed, Scopus, Web of Science, Embase, and Cochrane), without language and time or type of study restrictions. Afterward, eligible articles were selected by screening the titles and abstracts based on main mesh keywords. For potentially eligible articles, the full text was also reviewed.
    UNASSIGNED: Artificial intelligence demonstrates promise in keratoconus diagnosis and clinical management, spanning early detection (especially in subclinical cases), preoperative screening, postoperative ectasia prediction after keratorefractive surgery, and guiding surgical decisions. The majority of studies employed a solitary machine learning algorithm, whereas minor studies assessed multiple algorithms that evaluated the association of various keratoconus staging and management strategies. Last but not least, AI has proven effective in guiding the implantation of intracorneal ring segments in keratoconus corneas and predicting surgical outcomes.
    UNASSIGNED: The efficient and widespread clinical translation of machine learning models in keratoconus management is a crucial goal of potential future approaches to better visual performance in keratoconus patients.
    UNASSIGNED: The article has been registered through PROSPERO, an international database of prospectively registered systematic reviews, with the ID: CRD42022319338.
    Keratoconus: from fundamentals to future Artificial intelligence has changed how we treat the eye disease keratoconus in recent years. This study examines the many keratoconus therapies available, including surgery and contact lens wear, and how artificial intelligence can improve the safety and accuracy of these procedures. We combed through numerous papers to locate this data. To achieve the best outcomes, several parameters and methods should be evaluated. According to the study, some elements from eye scans are more useful than others. The idea behind using artificial intelligence is to help patients see better and treat keratoconus more effectively.
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