AI, artificial intelligence

AI,人工智能
  • 文章类型: Journal Article
    头颈部放疗引起重要的毒性,其疗效和耐受性因患者而异。放射治疗技术的进步,随着图像引导质量和频率的提高,提供一个独特的机会,根据成像生物标志物个性化放疗,目的是提高辐射功效,同时降低其毒性。整合临床数据和影像组学的各种人工智能模型在头颈部癌症放射治疗中的毒性和癌症控制结果预测方面显示出令人鼓舞的结果。这些模型的临床实施可能会导致个性化的基于风险的治疗决策,但目前研究的可靠性有限。理解,需要验证这些模型并将其扩展到更大的多机构数据集,并在临床试验的背景下对其进行测试,以确保安全的临床实施。这篇综述总结了用于预测头颈部癌症放疗结果的机器学习模型的最新技术。
    Head and neck radiotherapy induces important toxicity, and its efficacy and tolerance vary widely across patients. Advancements in radiotherapy delivery techniques, along with the increased quality and frequency of image guidance, offer a unique opportunity to individualize radiotherapy based on imaging biomarkers, with the aim of improving radiation efficacy while reducing its toxicity. Various artificial intelligence models integrating clinical data and radiomics have shown encouraging results for toxicity and cancer control outcomes prediction in head and neck cancer radiotherapy. Clinical implementation of these models could lead to individualized risk-based therapeutic decision making, but the reliability of the current studies is limited. Understanding, validating and expanding these models to larger multi-institutional data sets and testing them in the context of clinical trials is needed to ensure safe clinical implementation. This review summarizes the current state of the art of machine learning models for prediction of head and neck cancer radiotherapy outcomes.
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  • 文章类型: Journal Article
    UNASSIGNED:本研究旨在开发一种基于人工智能的计算机辅助诊断系统(AI-CAD),以模拟放射科医生对食管鳞状细胞癌(ESCC)患者淋巴结转移(LNM)的诊断逻辑。这有助于临床治疗决策。
    UNASSIGNED:来自三家医院的689例ESCCPET/CT图像患者被纳入,并分为一个培训队列和两个外部验证队列。还包括来自三个公开可用数据集的452张CT图像用于预训练模型。首先使用基于U-Net的多器官分割模型自动获得CT图像的解剖信息,随后使用基于梯度的方法从PET图像中提取代谢信息。AI-CAD是在培训队列中开发的,并在两个验证队列中进行了外部验证。
    UNASSIGNED:AI-CAD在外部队列中预测病理性LNM的准确性为0.744,并且在两个外部验证队列中与人类专家达成了良好的一致性(kappa=0.674和0.587,p<0.001)。借助AI-CAD,人类专家对LNM的诊断性能显著提高(准确度[95%置信区间]:0.712[0.669-0.758]与0.833[0.797-0.865],特异性[95%置信区间]:0.697[0.636-0.753]vs.0.891[0.851-0.928];p<0.001)在外部验证队列中接受淋巴结切除术的患者中。
    UASSIGNED:AI-CAD可以帮助ESCC患者术前诊断LNM,从而支持临床治疗决策。
    UNASSIGNED: This study aimed to develop an artificial intelligence-based computer-aided diagnosis system (AI-CAD) emulating the diagnostic logic of radiologists for lymph node metastasis (LNM) in esophageal squamous cell carcinoma (ESCC) patients, which contributed to clinical treatment decision-making.
    UNASSIGNED: A total of 689 ESCC patients with PET/CT images were enrolled from three hospitals and divided into a training cohort and two external validation cohorts. 452 CT images from three publicly available datasets were also included for pretraining the model. Anatomic information from CT images was first obtained automatically using a U-Net-based multi-organ segmentation model, and metabolic information from PET images was subsequently extracted using a gradient-based approach. AI-CAD was developed in the training cohort and externally validated in two validation cohorts.
    UNASSIGNED: The AI-CAD achieved an accuracy of 0.744 for predicting pathological LNM in the external cohort and a good agreement with a human expert in two external validation cohorts (kappa = 0.674 and 0.587, p < 0.001). With the aid of AI-CAD, the human expert\'s diagnostic performance for LNM was significantly improved (accuracy [95% confidence interval]: 0.712 [0.669-0.758] vs. 0.833 [0.797-0.865], specificity [95% confidence interval]: 0.697 [0.636-0.753] vs. 0.891 [0.851-0.928]; p < 0.001) among patients underwent lymphadenectomy in the external validation cohorts.
    UNASSIGNED: The AI-CAD could aid in preoperative diagnosis of LNM in ESCC patients and thereby support clinical treatment decision-making.
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  • 文章类型: Journal Article
    移植用于1型糖尿病的胰岛的生存能力因热缺血而降低,二甲基二氧基甘氨酸(DMOG;缺氧模型),氧化应激和细胞因子损伤。这导致频繁的移植失败和患者必须经历多轮治疗以获得胰岛素独立性的主要负担。目前在临床移植之前没有可靠的措施来评估胰岛制剂的活力。我们研究了深层形态特征(DMS),用于检测胰岛暴露于明场图像中损害生存能力的损害。准确度范围从98%到68%;ROS伤害,促炎细胞因子,热缺血和DMOG。当胰岛被分解为单细胞以实现更高的吞吐量数据收集时,仍然获得了良好的准确性(83-71%)。胰岛的封装降低了细胞因子暴露的准确性,但仍然很高(78%)。移植到同基因小鼠模型中的胰岛制剂的DMS的无监督建模能够预测它们是否会以100%的准确性恢复葡萄糖控制。我们构建DMS的策略对于评估胰岛移植前的生存能力是有效的。如果翻译成诊所,标准设备可用于前瞻性地鉴定不能有助于恢复血糖控制和减轻不成功治疗负担的非功能性胰岛制剂。
    Islets transplanted for type-1 diabetes have their viability reduced by warm ischemia, dimethyloxalylglycine (DMOG; hypoxia model), oxidative stress and cytokine injury. This results in frequent transplant failures and the major burden of patients having to undergo multiple rounds of treatment for insulin independence. Presently there is no reliable measure to assess islet preparation viability prior to clinical transplantation. We investigated deep morphological signatures (DMS) for detecting the exposure of islets to viability compromising insults from brightfield images. Accuracies ranged from 98 % to 68 % for; ROS damage, pro-inflammatory cytokines, warm ischemia and DMOG. When islets were disaggregated to single cells to enable higher throughput data collection, good accuracy was still obtained (83-71 %). Encapsulation of islets reduced accuracy for cytokine exposure, but it was still high (78 %). Unsupervised modelling of the DMS for islet preparations transplanted into a syngeneic mouse model was able to predict whether or not they would restore glucose control with 100 % accuracy. Our strategy for constructing DMS\' is effective for the assessment of islet pre-transplant viability. If translated into the clinic, standard equipment could be used to prospectively identify non-functional islet preparations unable to contribute to the restoration of glucose control and reduce the burden of unsuccessful treatments.
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  • 文章类型: Editorial
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  • 文章类型: Journal Article
    心血管疾病的患病率在世界范围内不断增加。然而,该技术正在发展,可以随时随地使用低成本传感器进行监控。这个课题正在研究中,不同的方法可以自动识别这些疾病,帮助患者和医疗保健专业人员进行治疗。本文对疾病识别进行了系统综述,分类,和ECG传感器识别。该评论的重点是2017年至2022年在不同科学数据库中发表的研究。包括PubMedCentral,Springer,Elsevier,多学科数字出版研究所(MDPI),IEEEXplore,和边界。对103篇科学论文进行了定量和定性分析。该研究表明,不同的数据集可以在线获得,其中包含与各种疾病有关的数据。在研究中确定了几种基于ML/DP的模型,其中卷积神经网络和支持向量机是应用最多的算法。这篇综述可以让我们确定可以在促进患者自主性的系统中使用的技术。
    The prevalence of cardiovascular diseases is increasing around the world. However, the technology is evolving and can be monitored with low-cost sensors anywhere at any time. This subject is being researched, and different methods can automatically identify these diseases, helping patients and healthcare professionals with the treatments. This paper presents a systematic review of disease identification, classification, and recognition with ECG sensors. The review was focused on studies published between 2017 and 2022 in different scientific databases, including PubMed Central, Springer, Elsevier, Multidisciplinary Digital Publishing Institute (MDPI), IEEE Xplore, and Frontiers. It results in the quantitative and qualitative analysis of 103 scientific papers. The study demonstrated that different datasets are available online with data related to various diseases. Several ML/DP-based models were identified in the research, where Convolutional Neural Network and Support Vector Machine were the most applied algorithms. This review can allow us to identify the techniques that can be used in a system that promotes the patient\'s autonomy.
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  • 文章类型: Journal Article
    未经证实:舌头图像(颜色,舌头的大小和形状以及颜色,舌苔的厚度和水分含量),根据中医理论反映全身的健康状况,已经在中国广泛使用了数千年。在这里,我们调查了舌象和舌苔微生物组在胃癌(GC)诊断中的价值。
    UNASSIGNED:从2020年5月到2021年1月,我们同时收集了中国328名GC患者(所有新诊断为GC)和304名非胃癌(NGC)参与者的舌象和舌苔样本,和16SrDNA用于表征舌苔样品的微生物组。然后,建立人工智能(AI)深度学习模型,评估舌象和舌苔微生物组在GC诊断中的价值。考虑到舌成像作为诊断工具更方便、更经济,我们于2020年5月至2022年3月在中国进一步开展了一项前瞻性多中心临床研究,招募了来自中国10个中心的937例GC患者和1911例NGC患者,以进一步评估舌象在GC诊断中的作用.此外,我们在另一个独立的外部验证队列中验证了该方法,该队列包括来自7个中心的294例GC患者和521例NGC患者.这项研究在ClinicalTrials.gov注册,NCT01090362。
    未经评估:第一次,我们发现舌象和舌苔微生物组可以作为GC诊断的工具,基于舌象的诊断模型的曲线下面积(AUC)值为0.89。基于舌苔微生物组的模型的AUC值使用属数据达到0.94,使用物种数据达到0.95。前瞻性多中心临床研究结果表明,三种基于舌象的GCs模型的AUC值在内部验证中达到0.88-0.92,在独立外部验证中达到0.83-0.88,显着优于八种血液生物标志物的组合。
    UNASSIGNED:我们的结果表明,舌头图像可作为GC诊断的稳定方法,并且显着优于常规血液生物标志物。我们开发的三种基于舌图像的AI深度学习诊断模型可用于充分区分GC患者和NGC参与者,甚至早期GC和癌前病变,如萎缩性胃炎(AG)。
    未经批准:国家重点研发计划(2021YFA0910100),浙江省中医药科技计划方案(2018ZY006),浙江省医学科技项目(2022KY114,WKJ-ZJ-2104),浙江省上消化道肿瘤研究中心(JBZX-202006),浙江省自然科学基金(HDMY22H160008),浙江省科技项目(2019C03049),国家自然科学基金(82074245,81973634,82204828),中国博士后科学基金(2022M713203)。
    UNASSIGNED: Tongue images (the colour, size and shape of the tongue and the colour, thickness and moisture content of the tongue coating), reflecting the health state of the whole body according to the theory of traditional Chinese medicine (TCM), have been widely used in China for thousands of years. Herein, we investigated the value of tongue images and the tongue coating microbiome in the diagnosis of gastric cancer (GC).
    UNASSIGNED: From May 2020 to January 2021, we simultaneously collected tongue images and tongue coating samples from 328 patients with GC (all newly diagnosed with GC) and 304 non-gastric cancer (NGC) participants in China, and 16 S rDNA was used to characterize the microbiome of the tongue coating samples. Then, artificial intelligence (AI) deep learning models were established to evaluate the value of tongue images and the tongue coating microbiome in the diagnosis of GC. Considering that tongue imaging is more convenient and economical as a diagnostic tool, we further conducted a prospective multicentre clinical study from May 2020 to March 2022 in China and recruited 937 patients with GC and 1911 participants with NGC from 10 centres across China to further evaluate the role of tongue images in the diagnosis of GC. Moreover, we verified this approach in another independent external validation cohort that included 294 patients with GC and 521 participants with NGC from 7 centres. This study is registered at ClinicalTrials.gov, NCT01090362.
    UNASSIGNED: For the first time, we found that both tongue images and the tongue coating microbiome can be used as tools for the diagnosis of GC, and the area under the curve (AUC) value of the tongue image-based diagnostic model was 0.89. The AUC values of the tongue coating microbiome-based model reached 0.94 using genus data and 0.95 using species data. The results of the prospective multicentre clinical study showed that the AUC values of the three tongue image-based models for GCs reached 0.88-0.92 in the internal verification and 0.83-0.88 in the independent external verification, which were significantly superior to the combination of eight blood biomarkers.
    UNASSIGNED: Our results suggest that tongue images can be used as a stable method for GC diagnosis and are significantly superior to conventional blood biomarkers. The three kinds of tongue image-based AI deep learning diagnostic models that we developed can be used to adequately distinguish patients with GC from participants with NGC, even early GC and precancerous lesions, such as atrophic gastritis (AG).
    UNASSIGNED: The National Key R&D Program of China (2021YFA0910100), Program of Zhejiang Provincial TCM Sci-tech Plan (2018ZY006), Medical Science and Technology Project of Zhejiang Province (2022KY114, WKJ-ZJ-2104), Zhejiang Provincial Research Center for Upper Gastrointestinal Tract Cancer (JBZX-202006), Natural Science Foundation of Zhejiang Province (HDMY22H160008), Science and Technology Projects of Zhejiang Province (2019C03049), National Natural Science Foundation of China (82074245, 81973634, 82204828), and Chinese Postdoctoral Science Foundation (2022M713203).
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  • 文章类型: Journal Article
    无定形固体分散体(ASD)是提高水溶性差药物溶解度和溶出度的重要策略之一。作为一种广泛使用的制备ASD的技术,热熔挤出(HME)提供各种好处,包括无溶剂工艺,连续制造,与基于溶剂的方法相比,高效混合,如喷雾干燥。能源输入,由热能和比机械能组成,在HME过程中应小心控制以防止化学降解和残余结晶度。然而,传统的ASD开发过程使用试错法,这是费力和耗时的。在这项研究中,我们已经成功构建了多个机器学习(ML)模型来预测结晶药物制剂的非晶化以及通过HME工艺制备的后续ASD的化学稳定性.我们使用了含有49种活性药物成分(API)和多种类型赋形剂的760种制剂。通过评估构建的ML模型,我们发现ECFP-LightGBM是预测非晶化的最佳模型,准确率为92.8%。此外,ECFP-XGBoost在估计化学稳定性方面是最好的,准确度为96.0%。此外,基于SHapley添加剂扩张(SHAP)和信息增益(IG)的特征重要性分析揭示了几个加工参数和材料属性(即,药物装载,聚合物比,药物的扩展连接指纹(ECFP)指纹,和聚合物的属性)对于实现所选模型的准确预测至关重要。此外,确定了与非晶化和化学稳定性相关的重要API亚结构,结果与文献基本一致。总之,我们建立了ML模型来预测化学稳定的ASD的形成,并确定HME处理过程中的关键属性。重要的是,开发的ML方法有可能促进HME制造的ASD的产品开发,从而大大减少了工作量。
    Amorphous solid dispersion (ASD) is one of the most important strategies to improve the solubility and dissolution rate of poorly water-soluble drugs. As a widely used technique to prepare ASDs, hot-melt extrusion (HME) provides various benefits, including a solvent-free process, continuous manufacturing, and efficient mixing compared to solvent-based methods, such as spray drying. Energy input, consisting of thermal and specific mechanical energy, should be carefully controlled during the HME process to prevent chemical degradation and residual crystallinity. However, a conventional ASD development process uses a trial-and-error approach, which is laborious and time-consuming. In this study, we have successfully built multiple machine learning (ML) models to predict the amorphization of crystalline drug formulations and the chemical stability of subsequent ASDs prepared by the HME process. We utilized 760 formulations containing 49 active pharmaceutical ingredients (APIs) and multiple types of excipients. By evaluating the built ML models, we found that ECFP-LightGBM was the best model to predict amorphization with an accuracy of 92.8%. Furthermore, ECFP-XGBoost was the best in estimating chemical stability with an accuracy of 96.0%. In addition, the feature importance analyses based on SHapley Additive exPlanations (SHAP) and information gain (IG) revealed that several processing parameters and material attributes (i.e., drug loading, polymer ratio, drug\'s Extended-connectivity fingerprints (ECFP) fingerprints, and polymer\'s properties) are critical for achieving accurate predictions for the selected models. Moreover, important API\'s substructures related to amorphization and chemical stability were determined, and the results are largely consistent with the literature. In conclusion, we established the ML models to predict formation of chemically stable ASDs and identify the critical attributes during HME processing. Importantly, the developed ML methodology has the potential to facilitate the product development of ASDs manufactured by HME with a much reduced human workload.
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  • 文章类型: Journal Article
    未经证实:选择感兴趣区域(ROI)进行左心耳(LAA)填充缺陷评估可能耗时且容易产生主观性。这项研究旨在开发和验证一种新型的人工智能(AI),基于深度学习(DL)的临床和亚临床心房颤动(AF)患者CT图像自动填充缺陷评估框架。
    UNASSIGNED:总共443,053个CT图像用于DL模型开发和测试。图像由AI框架和专家心脏病学家/放射科医生进行分析。使用Dice系数评估LAA分割性能。使用组内相关系数(ICC)分析评估手动和自动LAAROI选择之间的一致性。基于计算的LAA与升主动脉Hounsfield单位(HU)比率,使用受试者工作特征(ROC)曲线分析来评估充盈缺陷。
    未经证实:共210名患者(第1组:亚临床房颤,n=105;第2组:临床房颤伴中风,n=35;第3组:用于导管消融的AF,n=70)。LAA体积分割达到0.931-0.945Dice评分。LAAROI选择与测试集上的手动选择表现出极好的一致性(ICC≥0.895,p<0.001)。自动框架在填充缺陷评估中实现了0.979的优异AUC评分。用于填充缺陷检测的ROC导出的最佳HU比率阈值为0.561。
    UNASSIGNED:新颖的基于AI的框架可以准确地分割左心耳区域并选择ROI,同时有效地避免小梁用于填充缺陷评估,实现接近专家的表现。该技术可能有助于预先检测房颤患者的潜在血栓栓塞风险。
    UNASSIGNED: Selecting region of interest (ROI) for left atrial appendage (LAA) filling defects assessment can be time consuming and prone to subjectivity. This study aimed to develop and validate a novel artificial intelligence (AI), deep learning (DL) based framework for automatic filling defects assessment on CT images for clinical and subclinical atrial fibrillation (AF) patients.
    UNASSIGNED: A total of 443,053 CT images were used for DL model development and testing. Images were analyzed by the AI framework and expert cardiologists/radiologists. The LAA segmentation performance was evaluated using Dice coefficient. The agreement between manual and automatic LAA ROI selections was evaluated using intraclass correlation coefficient (ICC) analysis. Receiver operating characteristic (ROC) curve analysis was used to assess filling defects based on the computed LAA to ascending aorta Hounsfield unit (HU) ratios.
    UNASSIGNED: A total of 210 patients (Group 1: subclinical AF, n = 105; Group 2: clinical AF with stroke, n = 35; Group 3: AF for catheter ablation, n = 70) were enrolled. The LAA volume segmentation achieved 0.931-0.945 Dice scores. The LAA ROI selection demonstrated excellent agreement (ICC ≥0.895, p < 0.001) with manual selection on the test sets. The automatic framework achieved an excellent AUC score of 0.979 in filling defects assessment. The ROC-derived optimal HU ratio threshold for filling defects detection was 0.561.
    UNASSIGNED: The novel AI-based framework could accurately segment the LAA region and select ROIs while effectively avoiding trabeculae for filling defects assessment, achieving close-to-expert performance. This technique may help preemptively detect the potential thromboembolic risk for AF patients.
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  • 文章类型: Journal Article
    UNASSIGNED:开发使用OCT成像检测玻璃体后脱离(PVD)的自动化算法。
    UNASSIGNED:诊断测试或技术的评估。
    未经评估:总的来说,回顾性回顾了2020年10月至2021年12月在学术视网膜诊所使用海德堡光谱从464名患者的865只眼获得的42385幅连续OCT图像(865个体积OCT扫描)。
    UNASSIGNED:我们开发了一种基于图像滤波和边缘检测的定制计算机视觉算法,用于检测玻璃体后部皮质,以确定PVD状态。还训练了基于卷积神经网络和ResNet-50架构的第二深度学习(DL)图像分类模型,以从OCT图像中识别PVD状态。训练数据集包括674个OCT体积扫描(33026个OCT图像),而验证测试集包括73张OCT容积扫描(3577张OCT图像)。总的来说,118个OCT体积扫描(5782个OCT图像)用作单独的外部测试数据集。
    未经评估:准确性,灵敏度,特异性,F1分数,测量受试者操作特征曲线下面积(AUROC)以评估自动算法的性能。
    UNASSIGNED:定制的计算机视觉算法和DL模型结果与经过训练的分级者标记的PVD状态在很大程度上一致。对于OCT容积扫描的PVD检测,DL方法实现了90.7%的准确度和0.932的F1评分,灵敏度为100%,特异性为74.5%。对于DL模型,AUROC在图像水平为89%,在体积水平为96%。定制的计算机视觉算法在同一任务中获得了89.5%的准确性和0.912的F1评分,灵敏度为91.9%,特异性为86.1%。
    UNASSIGNED:应用于OCT成像的计算机视觉算法和DL模型都能够可靠地检测PVD状态,展示了基于OCT的自动PVD状态分类以协助玻璃体视网膜手术计划的潜力。
    UNASSIGNED:在参考文献之后可以找到专有或商业披露。
    UNASSIGNED: To develop automated algorithms for the detection of posterior vitreous detachment (PVD) using OCT imaging.
    UNASSIGNED: Evaluation of a diagnostic test or technology.
    UNASSIGNED: Overall, 42 385 consecutive OCT images (865 volumetric OCT scans) obtained with Heidelberg Spectralis from 865 eyes from 464 patients at an academic retina clinic between October 2020 and December 2021 were retrospectively reviewed.
    UNASSIGNED: We developed a customized computer vision algorithm based on image filtering and edge detection to detect the posterior vitreous cortex for the determination of PVD status. A second deep learning (DL) image classification model based on convolutional neural networks and ResNet-50 architecture was also trained to identify PVD status from OCT images. The training dataset consisted of 674 OCT volume scans (33 026 OCT images), while the validation testing set consisted of 73 OCT volume scans (3577 OCT images). Overall, 118 OCT volume scans (5782 OCT images) were used as a separate external testing dataset.
    UNASSIGNED: Accuracy, sensitivity, specificity, F1-scores, and area under the receiver operator characteristic curves (AUROCs) were measured to assess the performance of the automated algorithms.
    UNASSIGNED: Both the customized computer vision algorithm and DL model results were largely in agreement with the PVD status labeled by trained graders. The DL approach achieved an accuracy of 90.7% and an F1-score of 0.932 with a sensitivity of 100% and a specificity of 74.5% for PVD detection from an OCT volume scan. The AUROC was 89% at the image level and 96% at the volume level for the DL model. The customized computer vision algorithm attained an accuracy of 89.5% and an F1-score of 0.912 with a sensitivity of 91.9% and a specificity of 86.1% on the same task.
    UNASSIGNED: Both the computer vision algorithm and the DL model applied on OCT imaging enabled reliable detection of PVD status, demonstrating the potential for OCT-based automated PVD status classification to assist with vitreoretinal surgical planning.
    UNASSIGNED: Proprietary or commercial disclosure may be found after the references.
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  • 文章类型: Journal Article
    人工智能(AI)最近在皮肤病学领域的图像分类和恶性预测方面取得了长足的进步。然而,由于模型的可变性,理解人工智能在临床皮肤病学实践中的适用性仍然具有挑战性,图像数据,数据库特征,和可变的结果指标。本系统综述旨在提供使用卷积神经网络的皮肤病学文献的全面概述。此外,这篇综述总结了图像数据集的现状,迁移学习方法,挑战,以及当前AI文献和当前批准模型作为临床决策支持工具的监管途径的局限性。
    Artificial intelligence (AI) has recently made great advances in image classification and malignancy prediction in the field of dermatology. However, understanding the applicability of AI in clinical dermatology practice remains challenging owing to the variability of models, image data, database characteristics, and variable outcome metrics. This systematic review aims to provide a comprehensive overview of dermatology literature using convolutional neural networks. Furthermore, the review summarizes the current landscape of image datasets, transfer learning approaches, challenges, and limitations within current AI literature and current regulatory pathways for approval of models as clinical decision support tools.
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