deep learning algorithm

深度学习算法
  • 文章类型: Journal Article
    光学相干断层扫描(OCT)是一种基于光的成像模式,广泛用于眼科疾病的诊断和管理,它开始被用来评估耳部疾病。然而,手动图像分析来解释它提供的图像中的解剖和病理发现是复杂和耗时的。为了简化数据分析和图像处理,我们应用了机器学习算法来识别和分割医学诊断的关键解剖结构,鼓膜.使用人体鼓膜的3D体积,我们使用阈值和轮廓查找来定位一系列对象。然后,我们应用TensorFlow深度学习算法,使用卷积神经网络识别对象内的鼓膜。最后,我们重建了3D体积以选择性地显示鼓膜。该算法能够正确地识别鼓膜,准确率约为98%,同时去除图像中的大部分伪影,由反射和信号饱和引起。因此,该算法显著提高了鼓膜的可视化,这是我们的首要目标.机器学习方法,比如这个,对于允许OCT医学成像成为耳鼻咽喉科领域中的一种方便且可行的诊断工具至关重要。
    Optical Coherence Tomography (OCT) is a light-based imaging modality that is used widely in the diagnosis and management of eye disease, and it is starting to become used to evaluate for ear disease. However, manual image analysis to interpret the anatomical and pathological findings in the images it provides is complicated and time-consuming. To streamline data analysis and image processing, we applied a machine learning algorithm to identify and segment the key anatomical structure of interest for medical diagnostics, the tympanic membrane. Using 3D volumes of the human tympanic membrane, we used thresholding and contour finding to locate a series of objects. We then applied TensorFlow deep learning algorithms to identify the tympanic membrane within the objects using a convolutional neural network. Finally, we reconstructed the 3D volume to selectively display the tympanic membrane. The algorithm was able to correctly identify the tympanic membrane properly with an accuracy of ~98% while removing most of the artifacts within the images, caused by reflections and signal saturations. Thus, the algorithm significantly improved visualization of the tympanic membrane, which was our primary objective. Machine learning approaches, such as this one, will be critical to allowing OCT medical imaging to become a convenient and viable diagnostic tool within the field of otolaryngology.
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  • 文章类型: Journal Article
    抗癌药物紫杉醇从体内清除的速率显著影响其剂量和化疗有效性。重要的是,紫杉醇清除率因个体而异,主要是因为遗传多态性。这种代谢变异性源于受多个单核苷酸多态性(SNP)影响的非线性过程。传统的生物信息学方法很难准确地分析这个复杂的过程,目前,没有建立有效的算法来研究SNP相互作用。
    我们开发了一种新的机器学习方法,称为GEP-CSIs数据挖掘算法。这个算法,GEP的高级版本,使用线性代数计算来处理离散变量。GEP-CSI算法根据非小细胞肺癌患者的紫杉醇清除率数据和遗传多态性计算适应度函数评分。将数据分为用于分析的主要集和验证集。
    我们确定并验证了1184个具有最高适应度函数值的三SNP组合。值得注意的是,发现SERPINA1、ATF3和EGF通过协调先前报道的在紫杉醇清除中显著的基因的活性而间接影响紫杉醇清除。特别有趣的是在基因FLT1,EGF和MUC16中发现了三种SNP的组合。这些SNP相关蛋白被证实在蛋白质-蛋白质相互作用网络中相互作用,为进一步探索其功能作用和机制奠定了基础。
    我们成功开发了一种有效的深度学习算法,专为SNP相互作用的细微差别挖掘而设计,利用紫杉醇清除率和个体遗传多态性的数据。
    UNASSIGNED: The rate at which the anticancer drug paclitaxel is cleared from the body markedly impacts its dosage and chemotherapy effectiveness. Importantly, paclitaxel clearance varies among individuals, primarily because of genetic polymorphisms. This metabolic variability arises from a nonlinear process that is influenced by multiple single nucleotide polymorphisms (SNPs). Conventional bioinformatics methods struggle to accurately analyze this complex process and, currently, there is no established efficient algorithm for investigating SNP interactions.
    UNASSIGNED: We developed a novel machine-learning approach called GEP-CSIs data mining algorithm. This algorithm, an advanced version of GEP, uses linear algebra computations to handle discrete variables. The GEP-CSI algorithm calculates a fitness function score based on paclitaxel clearance data and genetic polymorphisms in patients with nonsmall cell lung cancer. The data were divided into a primary set and a validation set for the analysis.
    UNASSIGNED: We identified and validated 1184 three-SNP combinations that had the highest fitness function values. Notably, SERPINA1, ATF3 and EGF were found to indirectly influence paclitaxel clearance by coordinating the activity of genes previously reported to be significant in paclitaxel clearance. Particularly intriguing was the discovery of a combination of three SNPs in genes FLT1, EGF and MUC16. These SNPs-related proteins were confirmed to interact with each other in the protein-protein interaction network, which formed the basis for further exploration of their functional roles and mechanisms.
    UNASSIGNED: We successfully developed an effective deep-learning algorithm tailored for the nuanced mining of SNP interactions, leveraging data on paclitaxel clearance and individual genetic polymorphisms.
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  • 文章类型: Journal Article
    全球人口老龄化是一个重大挑战,老年人的身体和认知能力下降,对慢性疾病和不良健康结局的脆弱性增加。这项研究旨在开发一种可解释的深度学习(DL)模型,以预测住院72小时内老年患者的不良事件。
    该研究使用了台湾一家主要医疗中心的回顾性数据(2017-2020年)。其中包括非创伤老年患者,他们去了急诊科并被送往普通病房。数据预处理包括收集预后因素,如生命体征,实验室结果,病史,和临床管理。开发了一种深度前馈神经网络,并使用准确性评估性能,灵敏度,特异性,阳性预测值(PPV),和接受者工作特征曲线下面积(AUC)。模型解释利用了Shapley加法解释(SHAP)技术。
    分析包括127,268名患者,2.6%的人即将经历重症监护病房转移,呼吸衰竭,或在住院期间死亡。DL模型在验证集和测试集中实现了0.86和0.84的AUC,分别,优于序贯器官衰竭评估(SOFA)评分。敏感性和特异性值范围为0.79至0.81。SHAP技术提供了对特征重要性和交互的见解。
    开发的DL模型在预测老年患者住院72小时内的严重不良事件方面具有很高的准确性。它的性能优于SOFA分数,并为模型的决策过程提供了有价值的见解。
    UNASSIGNED: The global aging population presents a significant challenge, with older adults experiencing declining physical and cognitive abilities and increased vulnerability to chronic diseases and adverse health outcomes. This study aims to develop an interpretable deep learning (DL) model to predict adverse events in geriatric patients within 72 hours of hospitalization.
    UNASSIGNED: The study used retrospective data (2017-2020) from a major medical center in Taiwan. It included non-trauma geriatric patients who visited the emergency department and were admitted to the general ward. Data preprocessing involved collecting prognostic factors like vital signs, lab results, medical history, and clinical management. A deep feedforward neural network was developed, and performance was evaluated using accuracy, sensitivity, specificity, positive predictive value (PPV), and area under the receiver operating characteristic curve (AUC). Model interpretation utilized the Shapley Additive Explanation (SHAP) technique.
    UNASSIGNED: The analysis included 127,268 patients, with 2.6% experiencing imminent intensive care unit transfer, respiratory failure, or death during hospitalization. The DL model achieved AUCs of 0.86 and 0.84 in the validation and test sets, respectively, outperforming the Sequential Organ Failure Assessment (SOFA) score. Sensitivity and specificity values ranged from 0.79 to 0.81. The SHAP technique provided insights into feature importance and interactions.
    UNASSIGNED: The developed DL model demonstrated high accuracy in predicting serious adverse events in geriatric patients within 72 hours of hospitalization. It outperformed the SOFA score and provided valuable insights into the model\'s decision-making process.
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  • 文章类型: Journal Article
    背景:当前活动跟踪器中的运动确定软件的准确性不足以用于科学应用,它们也不是开源的。
    目标:为了解决这个问题,我们开发了一种精确的,可训练,以及基于智能手机的开源活动跟踪工具箱,该工具箱由一个Android应用程序(HumanActivityRecorder)和2种可以适应新行为的不同深度学习算法组成。
    方法:我们采用了一种半监督深度学习方法,基于加速度测量和陀螺仪数据来识别不同类别的活动。使用我们自己的数据和开放的竞争数据。
    结果:我们的方法对采样率和传感器尺寸输入的变化具有鲁棒性,在对我们自己记录的数据和MotionSense数据的6种不同行为进行分类时,准确率约为87%。然而,如果在我们自己的数据上测试维度自适应神经架构模型,准确率下降到26%,这证明了我们算法的优越性,它对用于训练维度自适应神经架构模型的MotionSense数据的执行率为63%。
    结论:HumanActivityRecorder是一种多功能,可重新训练,开源,和精确的工具箱,不断测试新的数据。这使研究人员能够适应被测量的行为,并在科学研究中实现可重复性。
    BACKGROUND: The accuracy of movement determination software in current activity trackers is insufficient for scientific applications, which are also not open-source.
    OBJECTIVE: To address this issue, we developed an accurate, trainable, and open-source smartphone-based activity-tracking toolbox that consists of an Android app (HumanActivityRecorder) and 2 different deep learning algorithms that can be adapted to new behaviors.
    METHODS: We employed a semisupervised deep learning approach to identify the different classes of activity based on accelerometry and gyroscope data, using both our own data and open competition data.
    RESULTS: Our approach is robust against variation in sampling rate and sensor dimensional input and achieved an accuracy of around 87% in classifying 6 different behaviors on both our own recorded data and the MotionSense data. However, if the dimension-adaptive neural architecture model is tested on our own data, the accuracy drops to 26%, which demonstrates the superiority of our algorithm, which performs at 63% on the MotionSense data used to train the dimension-adaptive neural architecture model.
    CONCLUSIONS: HumanActivityRecorder is a versatile, retrainable, open-source, and accurate toolbox that is continually tested on new data. This enables researchers to adapt to the behavior being measured and achieve repeatability in scientific studies.
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  • 文章类型: Journal Article
    尽管正在进行安全工作,建筑工地的事故率非常高。尽管长期以来一直积极推行降低建筑业事故风险的政策和研究,建筑业的事故率大大高于其他行业。城市人口扩张带动的大规模建设项目的快速增长可能会进一步加剧这一趋势。因此,提前准确预测建筑工地事故的恢复期,并积极投资缓解事故的措施,对于有效管理建筑项目至关重要。因此,本研究的目的是根据施工现场的规模,提出一个基于深度神经网络(DNN)算法开发事故预测模型的框架。这项研究提出了DNN模型,并将DNN应用于每个施工现场规模,以预测事故恢复期。使用平均绝对误差(MAE)和均方根误差(RMSE)评估模型的性能和准确性,并与广泛使用的多元回归分析模型进行比较。作为模型比较的结果,对于中小型和大型建筑工地,DNN模型的预测错误率均低于回归分析模型。本研究的结果和框架可以作为使用深度学习技术进行事故风险评估的开始阶段。并根据施工现场的规模将深度学习技术引入安全管理中作为指南。
    Despite ongoing safety efforts, construction sites experience a concerningly high accident rate. Notwithstanding that policies and research to reduce the risk of accidents in the construction industry have been active for a long time, the accident rate in the construction industry is considerably higher than in other industries. This trend may likely be further exacerbated by the rapid growth of large-scale construction projects driven by urban population expansion. Consequently, accurately predicting recovery periods of accidents at construction sites in advance and proactively investing in measures to mitigate them is critical for efficiently managing construction projects. Therefore, the purpose of this study is to propose a framework for developing accident prediction models based on the Deep Neural Network (DNN) algorithm according to the scale of the construction site. This study suggests DNN models and applies the DNN for each construction site scale to predict accident recovery periods. The model performance and accuracy were evaluated using mean absolute error (MAE) and root-mean-square error (RMSE) and compared with the widely used multiple regression analysis model. As a result of model comparison, the DNN models showed a lower prediction error rate than the regression analysis models for both small-to-medium and large construction sites. The findings and framework of this study can be applied as the opening stage of accident risk assessment using deep learning techniques, and the introduction of deep learning technology to safety management according to the scale of the construction site is provided as a guideline.
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  • 文章类型: Journal Article
    在这项工作中,我们提出了一种利用混合深度学习方法的光倍频方法,该方法将残差网络(ResNet)与随机森林回归(RFR)算法集成在一起。采用三种不同的倍频调制方案来说明该方法,这可以为这些方案获得合适的参数。根据算法预测的参数,8-tupling,12元组,并通过数值模拟产生16倍频毫米波信号。仿真结果表明,对于8倍倍频,OSSR(光边带抑制比)为30.73dB,80GHz的RFSSR(射频杂散抑制比)为42.29dB。对于12倍倍频乘法,OSSR为30.09dB,120GHz毫米波的RFSSR为36.21dB。为了产生16倍频毫米波,获得29.86dB的OSSR和34.52dB的RFSSR。此外,还研究了幅度波动和偏置电压漂移对毫米波信号质量的影响。
    In this work, we present a method for optical frequency multiplication utilizing a hybrid deep learning approach that integrates the Residual Network (ResNet) with the Random Forest Regression (RFR) algorithm. Three different frequency multiplication modulation schemes are adopted to illustrate the method, which can obtain suitable parameters for these schemes. Based on the parameters predicted by the algorithm, the 8-tupling, 12-tupling, and 16-tupling mm-wave signals are generated by numerical simulation. The simulation results show that for 8-tupling frequency multiplication, an OSSR (optical sideband suppression ratio) is 30.73 dB and an RFSSR (radio frequency spurious suppression ratio) of 80 GHz is 42.29 dB. For 12-tupling frequency multiplication, the OSSR is 30.09 dB, and the RFSSR of the 120 GHz mm wave is 36.21 dB. For generating 16-tupling frequency mm-wave, an OSSR of 29.86 dB and an RFSSR of 34.52 dB are obtained. In addition, the impact of amplitude fluctuation and bias voltage drift on the quality of mm-wave signals is also studied.
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  • 文章类型: Journal Article
    肾透明细胞癌(ccRCC),最常见的肾细胞癌亚型,具有高度复杂的肿瘤微环境的高度异质性。现有的临床干预策略,如靶向治疗和免疫疗法,未能取得良好的治疗效果。在这篇文章中,采用从GEO数据库下载的6名患者的单细胞转录组测序(scRNA-seq)数据来描述ccRCC的肿瘤微环境(TME),包括它的T细胞,肿瘤相关巨噬细胞(TAMs),内皮细胞(ECs),和癌症相关成纤维细胞(CAFs)。根据TME的差分类型,我们确定了由三个关键转录因子(TF)介导的肿瘤细胞特异性调控程序,而通过我们对ccRCC蛋白结构的分析,通过药物虚拟筛选鉴定了TFEPAS1/HIF-2α。然后,使用组合的深图神经网络和机器学习算法从生物活性化合物库中选择抗ccRCC化合物,包括FDA批准的药物库,天然产品库,和人内源性代谢物化合物库。最后,得到5个化合物,包括两种FDA批准的药物(氟芬那酸和氟达拉滨),一种内源性代谢物,一种免疫学/炎症相关化合物,和一种DNA甲基转移酶抑制剂(N4-甲基胞苷,一种胞嘧啶核苷类似物,像zebularine,具有抑制DNA甲基转移酶的机制)。基于ccRCC的肿瘤微环境特征,鉴定了五种ccRCC特异性化合物,这将为ccRCC患者的临床治疗提供指导。
    Clear cell renal carcinoma (ccRCC), the most common subtype of renal cell carcinoma, has the high heterogeneity of a highly complex tumor microenvironment. Existing clinical intervention strategies, such as target therapy and immunotherapy, have failed to achieve good therapeutic effects. In this article, single-cell transcriptome sequencing (scRNA-seq) data from six patients downloaded from the GEO database were adopted to describe the tumor microenvironment (TME) of ccRCC, including its T cells, tumor-associated macrophages (TAMs), endothelial cells (ECs), and cancer-associated fibroblasts (CAFs). Based on the differential typing of the TME, we identified tumor cell-specific regulatory programs that are mediated by three key transcription factors (TFs), whilst the TF EPAS1/HIF-2α was identified via drug virtual screening through our analysis of ccRCC\'s protein structure. Then, a combined deep graph neural network and machine learning algorithm were used to select anti-ccRCC compounds from bioactive compound libraries, including the FDA-approved drug library, natural product library, and human endogenous metabolite compound library. Finally, five compounds were obtained, including two FDA-approved drugs (flufenamic acid and fludarabine), one endogenous metabolite, one immunology/inflammation-related compound, and one inhibitor of DNA methyltransferase (N4-methylcytidine, a cytosine nucleoside analogue that, like zebularine, has the mechanism of inhibiting DNA methyltransferase). Based on the tumor microenvironment characteristics of ccRCC, five ccRCC-specific compounds were identified, which would give direction of the clinical treatment for ccRCC patients.
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  • 文章类型: Case Reports
    我们已经证明了SYNAPSEVINCENT®(6.6版;富士胶片医疗公司,Ltd.,东京,Japan),三维图像分析系统,在胰周血管的半自动模拟中,胰管,胰腺实质,和胰腺周围器官使用深度学习算法开发的人工智能(AI)引擎。此外,我们调查了这种AI引擎对胰腺癌患者的有用性。这里,我们介绍了1例腹腔镜远端胰腺切除术的情况,并通过AI引擎使用手术模拟和导航进行了扩展的外科手术.一名80岁的妇女出现腹痛。增强的腹部计算机断层扫描(CT)显示主胰管扩张,最大直径为40mm。此外,胰头和胰体之间有一个17毫米的囊性病变,胰尾有一个14毫米的壁结节。因此,该病变术前诊断为胰尾导管内乳头状癌(IPMC),并根据第8版国际癌症控制联盟指南分类为T1N0M0IA期.本患者接受了腹腔镜远端胰腺切除术和区域淋巴结切除术。特别是,因为有必要包括胰腺颈部的囊性病变,胰腺切除术在门静脉的右边缘进行,比平常更靠近胰头。我们通常采用三维计算机图形学(3DCG)手术模拟和导航,这让我们认识到手术解剖结构,包括胰腺切除的位置.除了显示手术解剖的详细3DCG,这项技术使外科手术人员可以分享情况,据报道,这种方法提高了手术的安全性。此外,残余胰腺体积(47.6%),胰腺切除表面积(161mm2),使用3DCG成像研究切除位置的胰腺实质(12mm)的厚度。术中冰冻活检证实切缘阴性。组织学上,在胰尾观察到导管内乳头状黏液性肿瘤伴低度发育不良.没有恶性发现,包括那些与切除边缘有关的,在标本中观察到。在术后12个月的随访检查中,病人的情况并不显著。我们得出的结论是,SYNAPSEVINCENT®AI引擎是提取周围血管的有用手术支持,周围的器官,和胰腺实质,包括胰腺切除的位置,即使在延长的外科手术的情况下。
    We have demonstrated the utility of SYNAPSE VINCENT® (version 6.6; Fujifilm Medical Co., Ltd., Tokyo, Japan), a 3D image analysis system, in semi-automated simulations of the peripancreatic vessels, pancreatic ducts, pancreatic parenchyma, and peripancreatic organs using an artificial intelligence (AI) engine developed with deep learning algorithms. Furthermore, we investigated the usefulness of this AI engine for patients with pancreatic cancer. Here, we present a case of laparoscopic distal pancreatectomy with an extended surgical procedure performed using surgical simulation and navigation via an AI engine. An 80-year-old woman presented with abdominal pain. Enhanced abdominal computed tomography (CT) revealed main pancreatic duct dilatation with a maximum diameter of 40 mm. Furthermore, there was a 17 mm cystic lesion between the pancreatic head and the pancreatic body and a 14 mm mural nodule in the pancreatic tail. Thus, the lesion was preoperatively diagnosed as an intraductal papillary carcinoma (IPMC) of the pancreatic tail and classified as T1N0M0 stage IA according to the 8th edition of the Union for International Cancer Control guidelines. The present patient had laparoscopic distal pancreatectomy and regional lymphadenectomy. In particular, since it was necessary to include the cystic lesion in the pancreatic neck, pancreatic resection was performed at the right edge of the portal vein, which is closer to the head of the pancreas than usual. We routinely employed three-dimensional computer graphics (3DCG) surgical simulation and navigation, which allowed us to recognize the surgical anatomy, including the location of pancreatic resection. In addition to displaying the detailed 3DCG of the surgical anatomy, this technology allowed surgical staff to share the situation, and it has been reported that this approach improves the safety of surgery. Furthermore, the remnant pancreatic volume (47.6%), pancreatic resection surface area (161 mm2), and thickness of the pancreatic parenchyma (12 mm) at the resection location were investigated using 3DCG imaging. Intraoperative frozen biopsy confirmed that the resection margin was negative. Histologically, an intraductal papillary mucinous neoplasm with low-grade dysplasia was observed in the pancreatic tail. No malignant findings, including those related to the resection margin, were observed in the specimen. At the 12-month postoperative follow-up examination, the patient\'s condition was unremarkable. We conclude that the SYNAPSE VINCENT® AI engine is a useful surgical support for the extraction of the surrounding vessels, surrounding organs, and pancreatic parenchyma including the location of the pancreatic resection even in the case of extended surgical procedures.
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  • 文章类型: Journal Article
    欺骗是日常生活中不可避免的事情。已使用各种方法来了解大脑欺骗的潜在机制。此外,人们已经做出了许多努力来检测欺骗和说实话。与其他最先进的方法相比,功能近红外光谱(fNIRS)在神经学应用中具有巨大的潜力。因此,本研究采用基于fNIRS的自发测谎模型。我们采访了10名健康受试者,以使用fNIRS系统识别欺骗行为。引入了经常被称为虚张声势或作弊的纸牌游戏。之所以选择此游戏,是因为它的规则非常适合测试我们的假设。将fNIRS的光学探头放在受试者的额头上,我们获得了光密度信号,然后使用修改的Beer-Lambert定律将其转换为氧合血红蛋白和脱氧血红蛋白信号。对氧合血红蛋白信号进行预处理以消除噪声。在这项研究中,我们提出了三个受深度学习模型启发的人工神经网络,包括AlexNet,ResNet,和GoogleNet,对欺骗和讲真话进行分类。所提出的模型达到了88.5%的精度,88.0%,90.0%,分别。将这些提出的模型与其他分类模型进行了比较,包括k最近邻,线性支持向量机(SVM),二次SVM,立方SVM,简单的决策树,和复杂的决策树。这些比较表明,所提出的模型比其他最先进的方法表现更好。
    Deception is an inevitable occurrence in daily life. Various methods have been used to understand the mechanisms underlying brain deception. Moreover, numerous efforts have been undertaken to detect deception and truth-telling. Functional near-infrared spectroscopy (fNIRS) has great potential for neurological applications compared with other state-of-the-art methods. Therefore, an fNIRS-based spontaneous lie detection model was used in the present study. We interviewed 10 healthy subjects to identify deception using the fNIRS system. A card game frequently referred to as a bluff or cheat was introduced. This game was selected because its rules are ideal for testing our hypotheses. The optical probe of the fNIRS was placed on the subject\'s forehead, and we acquired optical density signals, which were then converted into oxy-hemoglobin and deoxy-hemoglobin signals using the Modified Beer-Lambert law. The oxy-hemoglobin signal was preprocessed to eliminate noise. In this study, we proposed three artificial neural networks inspired by deep learning models, including AlexNet, ResNet, and GoogleNet, to classify deception and truth-telling. The proposed models achieved accuracies of 88.5%, 88.0%, and 90.0%, respectively. These proposed models were compared with other classification models, including k-nearest neighbor, linear support vector machines (SVM), quadratic SVM, cubic SVM, simple decision trees, and complex decision trees. These comparisons showed that the proposed models performed better than the other state-of-the-art methods.
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  • 文章类型: Journal Article
    以前用于脑转移(BM)检测和分割的深度学习(DL)算法在临床中尚未普遍使用,因为它们会产生假阳性结果,需要多个序列,并不能反映坏死等生理特性。这项研究的目的是使用反映坏死的单个序列开发一种临床上更有利的DL算法(RLK-Unet),并将其应用于自动治疗反应评估。
    总共128名患者,1339名BMs,使用对比增强3DT1加权(T1WI)涡轮自旋回波黑色血液序列进行BM磁共振成像,包括在DL算法的开发中。评估了58例629例BMs的治疗反应。检测灵敏度,精度,骰子相似系数(DSC),评估了神经放射学家和RLK-Unet之间治疗反应评估的一致性。
    RLK-Unet对BM表现出86.9%的灵敏度和79.6%的精度,并且具有0.663的DSC。具有较大BM的亚组的分割性能更好(DSC,0.843).放射科医师和RLK-Unet之间对BM的响应评估的一致性非常好(组内相关性,0.84).
    RLK-Unet可以准确检测和分割BM,可以帮助临床医生评估治疗反应。
    UNASSIGNED: Previous deep learning (DL) algorithms for brain metastasis (BM) detection and segmentation have not been commonly used in clinics because they produce false-positive findings, require multiple sequences, and do not reflect physiological properties such as necrosis. The aim of this study was to develop a more clinically favorable DL algorithm (RLK-Unet) using a single sequence reflecting necrosis and apply it to automated treatment response assessment.
    UNASSIGNED: A total of 128 patients with 1339 BMs, who underwent BM magnetic resonance imaging using the contrast-enhanced 3D T1 weighted (T1WI) turbo spin-echo black blood sequence, were included in the development of the DL algorithm. Fifty-eight patients with 629 BMs were assessed for treatment response. The detection sensitivity, precision, Dice similarity coefficient (DSC), and agreement of treatment response assessments between neuroradiologists and RLK-Unet were assessed.
    UNASSIGNED: RLK-Unet demonstrated a sensitivity of 86.9% and a precision of 79.6% for BMs and had a DSC of 0.663. Segmentation performance was better in the subgroup with larger BMs (DSC, 0.843). The agreement in the response assessment for BMs between the radiologists and RLK-Unet was excellent (intraclass correlation, 0.84).
    UNASSIGNED: RLK-Unet yielded accurate detection and segmentation of BM and could assist clinicians in treatment response assessment.
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