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  • 文章类型: Journal Article
    缺血性脑中风是由于大脑血流阻塞而发生的严重医疗状况,通常由血栓或动脉阻塞引起。早期发现对于有效治疗至关重要。这项研究旨在通过引入一种新的方法来提高临床环境中缺血性脑中风的检测和分类,集成深度学习,和智能病变检测和分割模型。所提出的混合模型使用10,000个计算机断层扫描的数据集来训练和测试。采用了25倍交叉验证技术,虽然使用准确性评估了模型的性能,精度,召回,F1得分。研究结果表明,当使用具有对比度限制的自适应直方图均衡设置为4的SPEM模型进行增强时,笔划图像的不同阶段的准确性显着提高。具体来说,超急性卒中图像的准确性显着提高(从0.876提高到0.933);急性卒中图像的准确性从0.881提高到0.948,从0.927到0.974的亚急性中风图像,慢性中风图像从0.928到0.982。因此,该研究显示了缺血性脑中风的检测和分类的重要前景。需要进一步的研究来验证其在更大数据集上的性能,并增强其与临床环境的整合。
    Ischemic brain strokes are severe medical conditions that occur due to blockages in the brain\'s blood flow, often caused by blood clots or artery blockages. Early detection is crucial for effective treatment. This study aims to improve the detection and classification of ischemic brain strokes in clinical settings by introducing a new approach that integrates the stroke precision enhancement, ensemble deep learning, and intelligent lesion detection and segmentation models. The proposed hybrid model was trained and tested using a dataset of 10,000 computed tomography scans. A 25-fold cross-validation technique was employed, while the model\'s performance was evaluated using accuracy, precision, recall, and F1 score. The findings indicate significant improvements in accuracy for different stages of stroke images when enhanced using the SPEM model with contrast-limited adaptive histogram equalization set to 4. Specifically, accuracy showed significant improvement (from 0.876 to 0.933) for hyper-acute stroke images; from 0.881 to 0.948 for acute stroke images, from 0.927 to 0.974 for sub-acute stroke images, and from 0.928 to 0.982 for chronic stroke images. Thus, the study shows significant promise for the detection and classification of ischemic brain strokes. Further research is needed to validate its performance on larger datasets and enhance its integration into clinical settings.
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  • 文章类型: Letter
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  • 文章类型: Journal Article
    目的:研究Chatbot生成预训练变压器(ChatGPT)-4在常见喉科疾病临床图片分析中的一致性。
    方法:前瞻性非对照研究。
    方法:多中心研究。
    方法:将患者病史和临床视频喉镜图像提供给ChatGPT-4进行鉴别诊断,管理,和治疗(S)。ChatGPT-4反应由3名盲喉科医师使用人工智能性能仪器(AIPI)进行评估。使用5点Likert量表评估了病例的复杂性以及从业人员与ChatGPT-4之间解释临床图像的一致性。使用组内相关系数(ICC)来衡量评估者之间的一致性强度。
    结果:40例患者,平均复杂性评分为2.60±1.15。包括在内。ChatGPT-4图像解释的平均一致性评分为2.46±1.42。ChatGPT-4完美分析了6例(15%;5/5)的临床图像,而GPT-4和法官之间的一致性在5个案例中很高(12.5%;4/5)。法官报告的一致性得分ICC为0.965(P=.001)。ChatGPT-4错误地记录了声带不规则性(肿块或病变),声门功能不全,和声带麻痹21(52.5%),2(0.05%),和5例(12.5%),分别。ChatGPT-4和从业人员进行了153和63次额外检查,分别(P=.001)。在20.0%至25.0%的病例中,ChatGPT-4的主要诊断是正确的。临床图像一致性评分与AIPI评分显著相关(rs=0.830;P=.001)。
    结论:ChatGPT-4在主要诊断中更有效,而不是在图像分析中,选择最适当的额外检查和治疗。
    OBJECTIVE: To investigate the consistency of Chatbot Generative Pretrained Transformer (ChatGPT)-4 in the analysis of clinical pictures of common laryngological conditions.
    METHODS: Prospective uncontrolled study.
    METHODS: Multicenter study.
    METHODS: Patient history and clinical videolaryngostroboscopic images were presented to ChatGPT-4 for differential diagnoses, management, and treatment(s). ChatGPT-4 responses were assessed by 3 blinded laryngologists with the artificial intelligence performance instrument (AIPI). The complexity of cases and the consistency between practitioners and ChatGPT-4 for interpreting clinical images were evaluated with a 5-point Likert Scale. The intraclass correlation coefficient (ICC) was used to measure the strength of interrater agreement.
    RESULTS: Forty patients with a mean complexity score of 2.60 ± 1.15. were included. The mean consistency score for ChatGPT-4 image interpretation was 2.46 ± 1.42. ChatGPT-4 perfectly analyzed the clinical images in 6 cases (15%; 5/5), while the consistency between GPT-4 and judges was high in 5 cases (12.5%; 4/5). Judges reported an ICC of 0.965 for the consistency score (P = .001). ChatGPT-4 erroneously documented vocal fold irregularity (mass or lesion), glottic insufficiency, and vocal cord paralysis in 21 (52.5%), 2 (0.05%), and 5 (12.5%) cases, respectively. ChatGPT-4 and practitioners indicated 153 and 63 additional examinations, respectively (P = .001). The ChatGPT-4 primary diagnosis was correct in 20.0% to 25.0% of cases. The clinical image consistency score was significantly associated with the AIPI score (rs = 0.830; P = .001).
    CONCLUSIONS: The ChatGPT-4 is more efficient in primary diagnosis, rather than in the image analysis, selecting the most adequate additional examinations and treatments.
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  • 文章类型: Journal Article
    本文使用批判性语篇分析来调查人工智能(AI)生成的老年护理护士图像,并考虑观点和看法如何影响护士的招聘和保留。这篇文章展示了老年护理护理的重新情境化,产生隐藏的意识形态,包括允许歧视和剥削的有害陈规定型观念。有人认为,这可能意味着护士在老年护理中需要较少的临床技能,降低在这一领域工作的价值。人工智能依赖于现有的数据集,因此代表了现有的刻板印象和偏见。话语分析突出了可能进一步影响护理招聘和保留的关键问题,并主张加强道德考量,包括在数据验证中使用专家,老年护理服务和护士的描绘方式和价值。
    This article uses critical discourse analysis to investigate artificial intelligence (AI) generated images of aged care nurses and considers how perspectives and perceptions impact upon the recruitment and retention of nurses. The article demonstrates a recontextualization of aged care nursing, giving rise to hidden ideologies including harmful stereotypes which allow for discrimination and exploitation. It is argued that this may imply that nurses require fewer clinical skills in aged care, diminishing the value of working in this area. AI relies on existing data sets, and thus represent existing stereotypes and biases. The discourse analysis has highlighted key issues which may further impact upon nursing recruitment and retention, and advocates for stronger ethical consideration, including the use of experts in data validation, for the way that aged care services and nurses are depicted and thus valued.
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  • 文章类型: Journal Article
    背景:目前正在研究基于超声的放射组学特征,以借助机器学习来区分良性和恶性乳腺病变。平均回声比已用于诊断恶性乳腺病变。然而,灰度强度直方图值作为使用机器学习算法检测恶性乳腺病变的单一影像组学特征尚未被探索。
    目的:本研究旨在评估简单的卷积神经网络在使用病变的灰度强度值对良性和恶性乳腺病变进行分类中的实用性。
    方法:收集200个超声乳腺病变的开放式在线数据集,并在病变上绘制感兴趣的区域。提取病变的灰度强度值。创建包含值的输入文件和由乳腺病变诊断组成的输出文件。使用这些文件对卷积神经网络进行训练,并在整个数据集上进行测试。
    结果:经训练的卷积神经网络的准确率为94.5%,精度为94%。敏感性和特异性分别为94.9%和94.1%,分别。
    结论:简单的神经网络,便宜且易于使用,可应用于诊断恶性乳腺病变与灰度强度值获得的超声图像在低资源设置与最少的人员。
    BACKGROUND: Ultrasound-based radiomic features to differentiate between benign and malignant breast lesions with the help of machine learning is currently being researched. The mean echogenicity ratio has been used for the diagnosis of malignant breast lesions. However, gray scale intensity histogram values as a single radiomic feature for the detection of malignant breast lesions using machine learning algorithms have not been explored yet.
    OBJECTIVE: This study aims to assess the utility of a simple convolutional neural network in classifying benign and malignant breast lesions using gray scale intensity values of the lesion.
    METHODS: An open-access online data set of 200 ultrasonogram breast lesions were collected, and regions of interest were drawn over the lesions. The gray scale intensity values of the lesions were extracted. An input file containing the values and an output file consisting of the breast lesions\' diagnoses were created. The convolutional neural network was trained using the files and tested on the whole data set.
    RESULTS: The trained convolutional neural network had an accuracy of 94.5% and a precision of 94%. The sensitivity and specificity were 94.9% and 94.1%, respectively.
    CONCLUSIONS: Simple neural networks, which are cheap and easy to use, can be applied to diagnose malignant breast lesions with gray scale intensity values obtained from ultrasonogram images in low-resource settings with minimal personnel.
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  • 文章类型: Journal Article
    有关健康牙齿组织的Hounsfield值范围的信息可能成为评估牙齿健康的附加工具,可以使用,在其他数据中,用于后续机器学习。
    我们研究的目的是确定以Hounsfield单位(HU)为单位的牙齿组织密度。
    总样本包括研究时年龄在10-11岁的36名健康儿童(n=21,58%的女孩和n=15,42%的男孩)。分析了320颗牙齿组织的密度。数据表示为均值和SDs。使用Student(1尾)t检验确定显著性。统计学意义设置为P<0.05。
    分析了320颗牙齿组织的密度:72颗(22.5%)第一恒磨牙,72个(22.5%)永久性中央切牙,27颗(8.4%)第二乳磨牙,40(12.5%)第二前磨牙的牙胚,37(11.6%)第二前磨牙,9(2.8%)第二恒磨牙,第二恒磨牙的牙胚为63个(19.7%)。对数据的分析表明,儿童健康牙齿的组织具有不同的密度范围:牙釉质,从平均2954.69(SD223.77)HU到平均2071.00(SD222.86)HU;牙本质,从平均1899.23(SD145.94)HU到平均1323.10(SD201.67)HU;和纸浆,从平均420.29(SD196.47)HU到平均183.63(SD97.59)HU。下颌骨和上颌骨中永久性中央切牙的组织(牙釉质和牙本质)的平均密度最高。没有可靠地确定有关牙齿组织密度的性别差异。
    对牙齿组织的Hounsfield值的评估可用作评估其密度的客观方法。如果确定釉质的密度,牙本质,和牙髓不符合健康牙齿组织的值范围,那么它可能表明病理。
    UNASSIGNED: Information about the range of Hounsfield values for healthy teeth tissues could become an additional tool in assessing dental health and could be used, among other data, for subsequent machine learning.
    UNASSIGNED: The purpose of our study was to determine dental tissue densities in Hounsfield units (HU).
    UNASSIGNED: The total sample included 36 healthy children (n=21, 58% girls and n=15, 42% boys) aged 10-11 years at the time of the study. The densities of 320 teeth tissues were analyzed. Data were expressed as means and SDs. The significance was determined using the Student (1-tailed) t test. The statistical significance was set at P<.05.
    UNASSIGNED: The densities of 320 teeth tissues were analyzed: 72 (22.5%) first permanent molars, 72 (22.5%) permanent central incisors, 27 (8.4%) second primary molars, 40 (12.5%) tooth germs of second premolars, 37 (11.6%) second premolars, 9 (2.8%) second permanent molars, and 63 (19.7%) tooth germs of second permanent molars. The analysis of the data showed that tissues of healthy teeth in children have different density ranges: enamel, from mean 2954.69 (SD 223.77) HU to mean 2071.00 (SD 222.86) HU; dentin, from mean 1899.23 (SD 145.94) HU to mean 1323.10 (SD 201.67) HU; and pulp, from mean 420.29 (SD 196.47) HU to mean 183.63 (SD 97.59) HU. The tissues (enamel and dentin) of permanent central incisors in the mandible and maxilla had the highest mean densities. No gender differences concerning the density of dental tissues were reliably identified.
    UNASSIGNED: The evaluation of Hounsfield values for dental tissues can be used as an objective method for assessing their densities. If the determined densities of the enamel, dentin, and pulp of the tooth do not correspond to the range of values for healthy tooth tissues, then it may indicate a pathology.
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  • 文章类型: Journal Article
    背景:人工智能(AI)的集成,特别是深度学习模型,改变了医疗技术的格局,特别是在使用成像和生理数据的诊断领域。在耳鼻喉科,AI在中耳疾病的图像分类中显示出希望。然而,现有的模型通常缺乏患者特定的数据和临床背景,限制其普遍适用性。GPT-4Vision(GPT-4V)的出现使得多模态诊断方法成为可能,将语言处理与图像分析相结合。
    目的:在本研究中,我们通过整合患者特异性数据和耳镜下鼓膜图像,研究了GPT-4V在诊断中耳疾病中的有效性.
    方法:本研究的设计分为两个阶段:(1)建立具有适当提示的模型和(2)验证最佳提示模型对图像进行分类的能力。总的来说,305个中耳疾病的耳镜图像(急性中耳炎,中耳胆脂瘤,慢性中耳炎,和渗出性中耳炎)来自2010年4月至2023年12月期间访问新州大学或济池医科大学的患者。使用提示和患者数据建立优化的GPT-4V设置,并使用最佳提示创建的模型来验证GPT-4V在190张图像上的诊断准确性。为了比较GPT-4V与医生的诊断准确性,30名临床医生完成了由190张图像组成的基于网络的问卷。
    结果:多模态人工智能方法实现了82.1%的准确率,优于认证儿科医生的70.6%,但落后于耳鼻喉科医生的95%以上。该模型对急性中耳炎的疾病特异性准确率为89.2%,76.5%为慢性中耳炎,79.3%为中耳胆脂瘤,渗出性中耳炎占85.7%,这突出了对疾病特异性优化的需求。与医生的比较显示了有希望的结果,提示GPT-4V增强临床决策的潜力。
    结论:尽管有其优势,必须解决数据隐私和道德考虑等挑战。总的来说,这项研究强调了多模式AI在提高诊断准确性和改善耳鼻喉科患者护理方面的潜力.需要进一步的研究以在不同的临床环境中优化和验证这种方法。
    The integration of artificial intelligence (AI), particularly deep learning models, has transformed the landscape of medical technology, especially in the field of diagnosis using imaging and physiological data. In otolaryngology, AI has shown promise in image classification for middle ear diseases. However, existing models often lack patient-specific data and clinical context, limiting their universal applicability. The emergence of GPT-4 Vision (GPT-4V) has enabled a multimodal diagnostic approach, integrating language processing with image analysis.
    In this study, we investigated the effectiveness of GPT-4V in diagnosing middle ear diseases by integrating patient-specific data with otoscopic images of the tympanic membrane.
    The design of this study was divided into two phases: (1) establishing a model with appropriate prompts and (2) validating the ability of the optimal prompt model to classify images. In total, 305 otoscopic images of 4 middle ear diseases (acute otitis media, middle ear cholesteatoma, chronic otitis media, and otitis media with effusion) were obtained from patients who visited Shinshu University or Jichi Medical University between April 2010 and December 2023. The optimized GPT-4V settings were established using prompts and patients\' data, and the model created with the optimal prompt was used to verify the diagnostic accuracy of GPT-4V on 190 images. To compare the diagnostic accuracy of GPT-4V with that of physicians, 30 clinicians completed a web-based questionnaire consisting of 190 images.
    The multimodal AI approach achieved an accuracy of 82.1%, which is superior to that of certified pediatricians at 70.6%, but trailing behind that of otolaryngologists at more than 95%. The model\'s disease-specific accuracy rates were 89.2% for acute otitis media, 76.5% for chronic otitis media, 79.3% for middle ear cholesteatoma, and 85.7% for otitis media with effusion, which highlights the need for disease-specific optimization. Comparisons with physicians revealed promising results, suggesting the potential of GPT-4V to augment clinical decision-making.
    Despite its advantages, challenges such as data privacy and ethical considerations must be addressed. Overall, this study underscores the potential of multimodal AI for enhancing diagnostic accuracy and improving patient care in otolaryngology. Further research is warranted to optimize and validate this approach in diverse clinical settings.
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  • 文章类型: Journal Article
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  • 文章类型: Journal Article
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  • 文章类型: Journal Article
    婴儿突然意外死亡(SUID)仍然是婴儿死亡的主要原因;因此,了解父母在家婴儿睡眠的做法至关重要。由于社交媒体分析产生了宝贵的患者观点,通过Facebook母亲小组在安全睡眠建议的背景下理解睡眠实践对政策制定者很有帮助,卫生保健提供者,和研究人员。
    这项研究旨在识别母亲分享的在线讨论SUID和安全睡眠的照片,并根据美国儿科学会(AAP)评估其与婴儿睡眠指南的一致性。我们假设这些照片与基于先前研究的指南以及在床上意外窒息和勒死的发生率不一致。
    数据是在2019年5月从Facebook母亲小组中提取的。在试用了各种搜索词后,在选定的Facebook群组上搜索“SIDS”一词导致了关于SUID和安全睡眠的最相关讨论。产生的数据,包括512位母亲中的20个帖子和912条评论,进行了定性的描述性内容分析。在完成提取和后续分析时,在讨论中确定了24张共享的个人照片。在照片中,14与婴儿睡眠环境有关。然后由2个独立的审阅者根据AAP标准评估婴儿睡眠环境的照片与安全睡眠指南的一致性。
    在与婴儿睡眠环境有关的共享照片中,86%(12/14)与AAP安全睡眠指南不一致。具体的不一致包括容易睡觉,睡眠环境中的异物,和使用婴儿睡眠装置。还确定了婴儿监测设备的使用。
    这项研究是独一无二的,因为照片来自家庭环境,在SUID和安全睡眠的背景下,并且是在没有研究人员干扰的情况下获得的。尽管研究有局限性,容易睡觉的共性,外来物体,以及婴儿睡眠和监测设备的使用(即,关于AAP安全睡眠指南的总体不一致)为未来关于父母进行婴儿安全睡眠障碍的调查奠定了基础,并对政策制定者产生了影响。临床医生,和研究人员。
    UNASSIGNED: Sudden unexpected infant death (SUID) remains a leading cause of infant mortality; therefore, understanding parental practices of infant sleep at home is essential. Since social media analyses yield invaluable patient perspectives, understanding sleep practices in the context of safe sleep recommendations via a Facebook mothers\' group is instrumental for policy makers, health care providers, and researchers.
    UNASSIGNED: This study aimed to identify photos shared by mothers discussing SUID and safe sleep online and assess their consistency with infant sleep guidelines per the American Academy of Pediatrics (AAP). We hypothesized the photos would not be consistent with guidelines based on prior research and increasing rates of accidental suffocation and strangulation in bed.
    UNASSIGNED: Data were extracted from a Facebook mothers\' group in May 2019. After trialing various search terms, searching for the term \"SIDS\" on the selected Facebook group resulted in the most relevant discussions on SUID and safe sleep. The resulting data, including 20 posts and 912 comments among 512 mothers, were extracted and underwent qualitative descriptive content analysis. In completing the extraction and subsequent analysis, 24 shared personal photos were identified among the discussions. Of the photos, 14 pertained to the infant sleep environment. Photos of the infant sleep environment were then assessed for consistency with safe sleep guidelines per the AAP standards by 2 separate reviewers.
    UNASSIGNED: Of the shared photos relating to the infant sleep environment, 86% (12/14) were not consistent with AAP safe sleep guidelines. Specific inconsistencies included prone sleeping, foreign objects in the sleeping environment, and use of infant sleeping devices. Use of infant monitoring devices was also identified.
    UNASSIGNED: This study is unique because the photos originated from the home setting, were in the context of SUID and safe sleep, and were obtained without researcher interference. Despite study limitations, the commonality of prone sleeping, foreign objects, and the use of both infant sleep and monitoring devices (ie, overall inconsistency regarding AAP safe sleep guidelines) sets the stage for future investigation regarding parental barriers to practicing safe infant sleep and has implications for policy makers, clinicians, and researchers.
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