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A Novel Brain Network Analysis Method for Pediatric ADHD Using RFE-GA Feature Selection Strategy. 利用 RFE-GA 特征选择策略分析小儿多动症的新型脑网络分析方法
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-30 DOI: 10.1088/2057-1976/ad8162
Xiang Gu, Chen Dang, Tianyu Shi, Lihan Tang, Kai Wang, Xiangsheng Luo, Yu Zhu, Yuan Feng, Guisen Wu, Ling Zou, Li Sun

Attention Deficit Hyperactivity Disorder (ADHD) is a highly prevalent childhood disorder, and related research has been increasing in recent years. However, it remains a challenging issue to accurately identify individuals with ADHD. The research proposes a method for ADHD detection using Recursive Feature Elimination-Genetic Algorithm (RFE-GA) for the feature selection of EEG data. Firstly, this study employed Transfer Entropy (TE) to construct brain networks from the EEG data of the ADHD and Normal groups, conducting an analysis of effective connectivity to unveil causal relationships in the brain's information exchange activities. Subsequently, a dual-layer feature selection method combining Recursive Feature Elimination (RFE) and Genetic Algorithm (GA) was proposed. Using the global search capability of GA and the feature selection ability of RFE, the performance of each feature subset is evaluated to find the optimal feature subset. Finally, a Support Vector Machine (SVM) classifier was employed to classify the ultimate feature set. The results revealed the control group exhibited lower connectivity strength in the left temporal alpha and beta bands, but higher frontal connectivity strength compared to the ADHD group. Additionally, in the gamma frequency band, the control group had higher top lobe connectivity strength than the ADHD group. Through the RFE-GA feature selection method, the optimized feature set was more concise, achieving classification accuracies of 91.3%, 94.1%, and 90.7% for the alpha, beta, and gamma frequency bands, respectively. The proposed RFE-GA feature selection method significantly reduced the number of features, thereby improving classification accuracy. .

注意力缺陷多动障碍(ADHD)是一种高发的儿童疾病,近年来相关研究也在不断增加。然而,如何准确识别多动症患者仍是一个具有挑战性的问题。本研究提出了一种利用递归特征消除遗传算法(RFE-GA)对脑电图数据进行特征选择的多动症检测方法。首先,本研究利用传递熵(TE)从多动症组和正常组的脑电图数据中构建脑网络,进行有效连通性分析,揭示大脑信息交换活动的因果关系。随后,提出了一种结合递归特征消除(RFE)和遗传算法(GA)的双层特征选择方法。利用遗传算法的全局搜索能力和 RFE 的特征选择能力,对每个特征子集的性能进行评估,从而找到最优特征子集。最后,采用支持向量机(SVM)分类器对最终特征集进行分类。结果显示,与多动症组相比,对照组在左颞阿尔法和贝塔波段表现出较低的连接强度,但额叶连接强度较高。此外,在伽马频段,对照组的顶叶连接强度高于多动症组。通过 RFE-GA 特征选择方法,优化后的特征集更加简洁,在阿尔法、贝塔和伽玛频段的分类准确率分别达到 91.3%、94.1% 和 90.7%。所提出的 RFE-GA 特征选择方法大大减少了特征数量,从而提高了分类准确率。
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引用次数: 0
Enhancing pap smear image classification: integrating transfer learning and attention mechanisms for improved detection of cervical abnormalities. 增强子宫颈抹片图像分类:整合迁移学习和注意力机制以改进宫颈异常的检测。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-30 DOI: 10.1088/2057-1976/ad7bc0
Tamanna Sood, Padmavati Khandnor, Rajesh Bhatia

Cervical cancer remains a major global health challenge, accounting for significant morbidity and mortality among women. Early detection through screening, such as Pap smear tests, is crucial for effective treatment and improved patient outcomes. However, traditional manual analysis of Pap smear images is labor-intensive, subject to human error, and requires extensive expertise. To address these challenges, automated approaches using deep learning techniques have been increasingly explored, offering the potential for enhanced diagnostic accuracy and efficiency. This research focuses on improving cervical cancer detection from Pap smear images using advanced deep-learning techniques. Specifically, we aim to enhance classification performance by leveraging Transfer Learning (TL) combined with an attention mechanism, supplemented by effective preprocessing techniques. Our preprocessing pipeline includes image normalization, resizing, and the application of Histogram of Oriented Gradients (HOG), all of which contribute to better feature extraction and improved model performance. The dataset used in this study is the Mendeley Liquid-Based Cytology (LBC) dataset, which provides a comprehensive collection of cervical cytology images annotated by expert cytopathologists. Initial experiments with the ResNet model on raw data yielded an accuracy of 63.95%. However, by applying our preprocessing techniques and integrating an attention mechanism, the accuracy of the ResNet model increased dramatically to 96.74%. Further, the Xception model, known for its superior feature extraction capabilities, achieved the best performance with an accuracy of 98.95%, along with high precision (0.97), recall (0.99), and F1-Score (0.98) on preprocessed data with an attention mechanism. These results underscore the effectiveness of combining preprocessing techniques, TL, and attention mechanisms to significantly enhance the performance of automated cervical cancer detection systems. Our findings demonstrate the potential of these advanced techniques to provide reliable, accurate, and efficient diagnostic tools, which could greatly benefit clinical practice and improve patient outcomes in cervical cancer screening.

宫颈癌仍然是全球健康面临的一项重大挑战,在妇女中的发病率和死亡率都很高。通过巴氏涂片检测等筛查手段及早发现宫颈癌对有效治疗和改善患者预后至关重要。然而,传统的巴氏涂片图像人工分析耗费大量人力,容易出现人为错误,而且需要丰富的专业知识。为了应对这些挑战,人们越来越多地探索使用深度学习技术的自动化方法,为提高诊断准确性和效率提供了可能。这项研究的重点是利用先进的深度学习技术改进从巴氏涂片图像中检测宫颈癌的方法。具体来说,我们旨在利用迁移学习(TL)结合注意力机制,辅以有效的预处理技术来提高分类性能。我们的预处理管道包括图像归一化、大小调整和定向梯度直方图(HOG)的应用,所有这些都有助于更好地提取特征和提高模型性能。本研究使用的数据集是 Mendeley 液基细胞学(LBC)数据集,该数据集提供了由细胞病理专家注释的全面的宫颈细胞学图像。使用 ResNet 模型对原始数据进行的初步实验得出的准确率为 63.95%。然而,通过应用我们的预处理技术和整合注意力机制,ResNet 模型的准确率大幅提高到 96.74%。此外,以其卓越的特征提取能力而著称的 Xception 模型在带有注意力机制的预处理数据上取得了 98.95% 的准确率,以及较高的精确度(0.97)、召回率(0.99)和 F1 分数(0.98),表现最佳。这些结果凸显了将预处理技术、TL 和注意力机制结合在一起,显著提高宫颈癌自动检测系统性能的有效性。我们的研究结果表明,这些先进技术有潜力提供可靠、准确和高效的诊断工具,这将大大有利于临床实践,并改善宫颈癌筛查中患者的预后。
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引用次数: 0
Biological Cell Response to Electric Field: A Review of Equivalent Circuit Models and Future Challenges. 生物细胞对电场的反应:等效电路模型回顾与未来挑战
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-27 DOI: 10.1088/2057-1976/ad8092
MirHojjat Seyedi

Biological cells, characterized by complex and dynamic structures, demand precise models for comprehensive understanding, especially when subjected to external factors such as electric fields (EF) for manipulation or treatment. This interaction is integral to technologies like pulsed electric fields (PEF), inducing reversible and irreversible structural variations. Our study explores both simplified and sophisticated equivalent circuit models for biological cells under the influence of an external EF, covering diverse cell structures from single- to double-shell configurations. The paper highlights challenges in circuit modeling, specifically addressing the incorporation of reversible or irreversible pores in the membrane during external EF interactions, emphasizing the need for further research to refine technical aspects in this field. Additionally, we review a comparative analysis of the performance and applicability of the proposed circuit models, providing insights into their strengths and limitations. This contributes to a deeper insight of the complexities associated with modeling biological cells under external EF influences, paving the way for enhanced applications in medical and technological domains in future. .

生物细胞具有复杂而动态的结构,需要精确的模型来全面了解,尤其是在受到电场(EF)等外部因素操纵或治疗时。这种相互作用是脉冲电场(PEF)等技术不可或缺的一部分,会引起可逆和不可逆的结构变化。我们的研究探讨了外部电场影响下生物细胞的简化和复杂等效电路模型,涵盖了从单壳到双壳配置的各种细胞结构。论文强调了电路建模面临的挑战,特别是在外部 EF 相互作用时在膜中加入可逆或不可逆孔的问题,强调了进一步研究以完善该领域技术方面的必要性。此外,我们还对所提出的电路模型的性能和适用性进行了比较分析,深入了解了这些模型的优势和局限性。这有助于更深入地了解与外部 EF 影响下的生物细胞建模相关的复杂性,为今后加强在医疗和技术领域的应用铺平道路。
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引用次数: 0
3-1-3 Weight averaging technique-based performance evaluation of deep neural networks for Alzheimer's disease detection using structural MRI. 3-1-3 基于权重平均技术的深度神经网络性能评估,利用结构性核磁共振成像检测阿尔茨海默病。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-24 DOI: 10.1088/2057-1976/ad72f7
Priyanka Gautam, Manjeet Singh

Alzheimer's disease (AD) is a progressive neurological disorder. It is identified by the gradual shrinkage of the brain and the loss of brain cells. This leads to cognitive decline and impaired social functioning, making it a major contributor to dementia. While there are no treatments to reverse AD's progression, spotting the disease's onset can have a significant impact in the medical field. Deep learning (DL) has revolutionized medical image classification by automating feature engineering, removing the requirement for human experts in feature extraction. DL-based solutions are highly accurate but demand a lot of training data, which poses a common challenge. Transfer learning (TL) has gained attention for its knack for handling limited data and expediting model training. This study uses TL to classify AD using T1-weighted 3D Magnetic Resonance Imaging (MRI) from the Alzheimer's Disease Neuroimaging (ADNI) database. Four modified pre-trained deep neural networks (DNN), VGG16, MobileNet, DenseNet121, and NASNetMobile, are trained and evaluated on the ADNI dataset. The 3-1-3 weight averaging technique and fine-tuning improve the performance of the classification models. The evaluated accuracies for AD classification are VGG16: 98.75%; MobileNet: 97.5%; DenseNet: 97.5%; and NASNetMobile: 96.25%. The receiver operating characteristic (ROC), precision-recall (PR), and Kolmogorov-Smirnov (KS) statistic plots validate the effectiveness of the modified pre-trained model. Modified VGG16 excels with area under the curve (AUC) values of 0.99 for ROC and 0.998 for PR curves. The proposed approach shows effective AD classification by achieving high accuracy using the 3-1-3 weight averaging technique and fine-tuning.

阿尔茨海默病(AD)是一种渐进性神经系统疾病。它表现为大脑逐渐萎缩和脑细胞丢失。这会导致认知能力下降和社会功能受损,成为痴呆症的主要诱因。深度学习(DL)通过自动特征工程,消除了特征提取对人类专家的要求,从而彻底改变了医学图像分类。基于深度学习的解决方案具有很高的准确性,但需要大量的训练数据,这是一个共同的挑战。迁移学习(TL)因其善于处理有限数据和加快模型训练而备受关注。本研究利用阿尔茨海默病神经影像(ADNI)数据库中的 T1 加权三维磁共振成像(MRI),使用 TL 对阿尔茨海默病进行分类。在 ADNI 数据集上训练和评估了四种经过修改的预训练深度神经网络 (DNN):VGG16、MobileNet、DenseNet121 和 NASNetMobile。3-1-3 权重平均技术和微调提高了分类模型的性能。经评估,AD 分类的准确率分别为:VGG16:98.75%;MobileNet:97.5%;DenseNet:97.5%:97.5%;DenseNet97.5%;NASNetMobile:96.25%。接受者操作特征图(ROC)、精度-召回图(PR)和 Kolmogorov-Smirnov 统计图验证了修改后的预训练模型的有效性。修改后的 VGG16 非常出色,其 ROC 曲线下面积 (AUC) 值为 0.99,PR 曲线下面积 (AUC) 值为 0.998。所提出的方法利用 3-1-3 权重平均技术和微调实现了较高的准确率,从而显示了有效的 AD 分类。
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引用次数: 0
Automated quantification of periodic discharges in human electroencephalogram. 自动量化人体脑电图中的周期性放电
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-20 DOI: 10.1088/2057-1976/ad6c53
Christopher M McGraw, Samvrit Rao, Shashank Manjunath, Jin Jing, M Brandon Westover

Periodic discharges (PDs) are pathologic patterns of epileptiform discharges repeating at regular intervals, commonly detected in the human electroencephalogram (EEG) signals in patients who are critically ill. The frequency and spatial extent of PDs are associated with the tendency of PDs to cause brain injury, existing automated algorithms do not quantify the frequency and spatial extent of PDs. The present study presents an algorithm for quantifying frequency and spatial extent of PDs. The algorithm quantifies the evolution of these parameters within a short (10-14 second) window, with a focus on lateralized and generalized periodic discharges. We test our algorithm on 300 'easy', 300 'medium', and 240 'hard' examples (840 total epochs) of periodic discharges as quantified by interrater consensus from human experts when analyzing the given EEG epochs. We observe 95.0% agreement with a 95% confidence interval (CI) of [94.9%, 95.1%] between algorithm outputs with reviewer clincal judgement for easy examples, 92.0% agreement (95% CI [91.9%, 92.2%]) for medium examples, and 90.4% agreement (95% CI [90.3%, 90.6%]) for hard examples. The algorithm is also computationally efficient and is able to run in 0.385 ± 0.038 seconds for a single epoch using our provided implementation of the algorithm. The results demonstrate the algorithm's effectiveness in quantifying these discharges and provide a standardized and efficient approach for PD quantification as compared to existing manual approaches.

周期性放电(PDs)是癫痫样放电每隔一定时间重复出现的病理模式,通常在危重病人的脑电图(EEG)信号中检测到。痫性放电的频率和空间范围与痫性放电导致脑损伤的倾向有关,现有的自动算法无法量化痫性放电的频率和空间范围。本研究提出了一种用于量化脑干畸形频率和空间范围的算法 。该算法可量化这些参数在短时间(10-14 秒)窗口内的变化,重点关注侧向和泛化周期性放电。我们在300个 "简单"、300个 "中等 "和240个 "困难 "的周期性放电实例(总计840个历时)上测试了我们的算法。我们观察到,对于简单的例子,算法输出与审查员的临床判断之间的一致性为95.0%$ ,95%置信区间(CI)为$[94.9%/%, 95.1%/%]$,而对于复杂的例子,算法输出与审查员的临床判断之间的一致性为92.0%$ 。0%$ 一致(95% CI $[91.9%,92.2%]$),90.4%$ 一致(95% CI $[90.3%,90.6%]$)。该算法的计算效率也很高,使用我们提供的算法实现,单个epoch的运行时间为0.385 pm 0.038$秒 。结果证明了该算法在量化这些放电方面的有效性,与现有的人工方法相比,该算法提供了一种标准化、高效的PD 量化方法。
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引用次数: 0
A leaf sequencing algorithm for an orthogonal dual-layer multileaf collimator. 正交双层多叶准直器的叶片排序算法。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-18 DOI: 10.1088/2057-1976/ad6c52
Weijie Cui, Jianrong Dai

Purpose. Dual layer MLC (DMLC) has have been adopted in several commercial products and one major challenge in DMLC usage is leaf sequencing for intensity-modulated radiation therapy (IMRT). In this study we developed a leaf sequencing algorithm for IMRT with an orthogonal DMLC.Methods and Materials. This new algorithm is inspired by the algorithm proposed by Dai and Zhu for IMRT with single layer MLC (SMLC). It iterately determines a delivery segment intensity and corresponding segment shape for a given fluence matrix and leaves residual fluence matrix to following iterations. The segment intensity is determined according to complexities of residual fluence matrix when segment intensity varies from one to highest level in the matrix. The segment intensity and corresponding segment shape that result least complexity was selected. Although the algorithm framework is similar to Dai and Zhu's algorithm, this new algorithm develops complexity algorithms along with rules for determining segment leaf settings when delivered with orthogonal DMLC. This algorithm has been evaluated with 9 groups of randomly generated fluence matrices with various dimensions and intensity levels. Sixteen fluence matrices generated in Pinnacle system for two clinical IMRT examples were also used for evaluation. Statistical information of leaf sequences generated with this algorithm for both the random and clinical matrices were compared to the results of two typical algorithms for SMLC: that proposed by Dai and Zhu and that proposed by Bortfled.Results. Compared to the SMLC delivery sequences generated with Dai and Zhu's algorithm, the proposed algorithm for orthogonal DMLC delivery reduces the average number of segments by 27.7% ∼ 41.8% for 9 groups of randomly generated fluence matrices and 10.5% ∼ 41.7% for clinical ones. When comparing MU efficiency between different algorithms, it is observed that the proposed algorithm performs better than the optimal efficiency of SMLC delivery when dealing with simple fluence matrices, but slightly worse when handling complex ones.Conclusion. This new algorithm generates leaf sequences for orthogonal DMLC delivery with high delivery efficiency in terms of number of leaf segments. This algorithm has potential to work well with orthogonal DMLC for improving efficiency or quality of IMRT.

目的:双层 MLC(DMLC)已被多个商业产品采用,DMLC 使用中的一个主要挑战是强度调制放射治疗(IMRT)的叶片排序。在这项研究中,我们为采用正交 DMLC 的 IMRT 开发了一种叶片排序算法:这种新算法受 Dai 和 Zhu 提出的单层 MLC(SMLC)IMRT 算法的启发。它针对给定的通量矩阵迭代确定投射区段强度和相应的区段形状,并将残余通量矩阵留给后续迭代。当分段强度在矩阵中从一级到最高级不等时,分段强度根据残余通量矩阵的复杂性来确定。选择复杂度最小的网段强度和相应的网段形状。我们用随机生成的 9 组不同维度和强度等级的通量矩阵对该算法进行了评估。在 Pinnacle 系统中为两个临床 IMRT 示例生成的 16 个剂量矩阵也被用于评估。使用该算法生成的随机矩阵和临床矩阵叶序列的统计信息与两种典型的 SMLC 算法(Dai 和 Zhu 提出的算法以及 Bortfled 提出的算法)的结果进行了比较:与用 Dai 和 Zhu 算法生成的 SMLC 传输序列相比,所提出的正交 DMLC 传输算法在 9 组随机生成的荧光矩阵中平均减少了 27.7%~41.8% 的段数,在临床矩阵中平均减少了 10.5%~41.7% 的段数。在比较不同算法的 MU 效率时发现,在处理简单通量矩阵时,拟议算法的表现优于 SMLC 传输的最佳效率,但在处理复杂通量矩阵时,拟议算法的表现稍差。
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引用次数: 0
Nanodosimetric investigation of the track structure of therapeutic carbon ion radiation. Part 1: measurement of ionization cluster size distributions. 治疗性碳离子辐射轨道结构的纳米计量学研究。第 1 部分:电离簇大小分布测量。
IF 1.4 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-17 DOI: 10.1088/2057-1976/ad7bc1
Gerhard Hilgers,Miriam Schwarze,Hans Rabus
At the Heidelberg Ion-Beam Therapy Center, the track structure of carbon ions of therapeutic energy after penetrating layers of simulated tissue was investigated for the first time. Measurements were conducted with carbon ion beams of different energies and polymethyl methacrylate (PMMA) absorbers of different thicknesses to realize different depths in the phantom along the pristine Bragg peak. Ionization cluster size (ICS) distributions resulting from the mixed radiation field behind the PMMA absorbers were measured using an ion-counting nanodosimeter. Two different measurements were carried out: (i) variation of the PMMA absorber thickness with constant carbon ion beam energy and (ii) combined variation of PMMA absorber thickness and carbon ion beam energy such that the kinetic energy of the carbon ions in the target volume is constant. The data analysis revealed unexpectedly high mean ICS values compared to stopping power calculations and the data measured at lower energies in earlier work. This suggests that in the measurements the carbon ion kinetic energies behind the PMMA absorber may have deviated considerably from the expected values obtained by the calculations. In addition, the results indicate the presence of a marked contribution of nuclear fragments to the measured ICS distributions, especially if the carbon ion does not cross the target volume.
海德堡离子束治疗中心首次研究了治疗能量碳离子穿透模拟组织层后的轨迹结构。测量使用了不同能量的碳离子束和不同厚度的聚甲基丙烯酸甲酯(PMMA)吸收体,以实现沿原始布拉格峰在模型中的不同深度。使用离子计数纳米计量器测量了 PMMA 吸收体后混合辐射场产生的电离簇大小 (ICS) 分布。进行了两种不同的测量:(i) 在碳离子束能量不变的情况下,改变 PMMA 吸收体的厚度;(ii) 结合改变 PMMA 吸收体的厚度和碳离子束的能量,使目标体积中的碳离子动能保持不变。数据分析显示,与停止功率计算和早期工作中在较低能量下测量的数据相比,ICS 平均值出乎意料地高。这表明,在测量中,PMMA 吸收体后面的碳离子动能可能与计算得出的预期值有很大偏差。此外,结果表明核碎片对测量的 ICS 分布有明显的贡献,尤其是在碳离子没有穿过靶体积的情况下。
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引用次数: 0
Comparison of monte carlo tally techniques for dosimetry in a transmission-type X-ray tube. 用于透射型 X 射线管剂量测定的蒙特卡洛统计技术比较。
IF 1.4 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-17 DOI: 10.1088/2057-1976/ad7bbf
Chen-Ju Feng,Chin-Hui Wu,Chin-Hsiung Lin,Shu-Wei Wu,Shih-Yong Luo,Ya-Ru Yang,Chao-Hua Lee,Shao-Chun Tseng,Shen-Hao Lee,Shih-Ming Hsu,Chin-Hui Wu
This study discussed comparing result accuracy and time cost under different tally methods using MCNP6 for a novel transmission X-ray tube which was designed for the Auger electron yield with specific material (eg. iodine). The assessment included photon spectrum, percent depth dose, mass-energy absorption coefficient corresponding to air and water, and figure of merit comparison. The mean energy of in-air phantom was from 41.8 keV (0 mm) to 40.9 keV (100 mm), and the mean energy of in-water phantom was from 41.41 keV (0 mm) to 45.2 keV (100 mm). The specific dose conversion factors based mass-energy absorption coefficient corresponding to different materials was established and the difference was less than 2% for the dose conversion of FMESH comparing to measurement data. FMESH had better figure of merit (FOM) than the F6 tally for the dose parameter assessment, which mean the dose calculation that focused on the superficial region could be assessed with more calculation efficiency by FMESH tally for this novel transmission X-ray tube. The results of this study could help develop treatment planning system (TPS) to quickly obtain the calculated data for phase space data establishment and heterogeneous correction under different physical condition settings. .
本研究讨论了使用 MCNP6 对新型透射 X 射线管进行不同统计方法下的结果准确性和时间成本比较,该 X 射线管是为特定材料(如碘)的奥格电子产率而设计的。评估内容包括光子光谱、深度剂量百分比、与空气和水相对应的质能吸收系数以及优点比较。空气中模型的平均能量为 41.8 keV(0 毫米)至 40.9 keV(100 毫米),水中模型的平均能量为 41.41 keV(0 毫米)至 45.2 keV(100 毫米)。根据不同材料的质能吸收系数确定了具体的剂量换算系数,与测量数据相比,FMESH 的剂量换算系数相差不到 2%。在剂量参数评估方面,FMESH 比 F6 计数值具有更好的优点(FOM),这意味着对于这种新型透射 X 射线管,FMESH 计数值能以更高的计算效率评估侧重于表层区域的剂量计算。本研究的结果有助于开发治疗计划系统(TPS),在不同的物理条件设置下快速获得相空间数据建立和异质校正的计算数据。
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引用次数: 0
A compact and low-frequency drive ultrasound transducer for facilitating cavitation-assisted drug permeation via skin. 用于促进空化辅助药物经皮肤渗透的紧凑型低频驱动超声换能器。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-16 DOI: 10.1088/2057-1976/ad7596
Shinya Yamamoto, Naohiro Sugita, Keita Tomioka, Tadahiko Shinshi

Low-frequency sonophoresis has emerged as a promising minimally invasive transdermal drug delivery method. However, effectively inducing cavitation on the skin surface with a compact, low-frequency ultrasound transducer poses a significant challenge. This paper presents a modified design of a low-frequency ultrasound transducer capable of generating ultrasound cavitation on the skin surfaces. The transducer comprises a piezoelectric ceramic disk and a bowl-shaped acoustic resonator. A conical slit structure was incorporated into the modified transducer design to amplify vibration displacement and enhance the maximum sound pressure. The FEM-based simulation results confirmed that the maximum sound pressure at the resonance frequency of 78 kHz was increased by 1.9 times that of the previous design. Ultrasound cavitation could be experimentally observed on the gel surface. Moreover, 3 min of ultrasound treatment significantly improved the caffeine permeability across an artificial membrane. These results demonstrated that this transducer holds promise for enhancing drug permeation by generating ultrasound cavitation on the skin surface.

低频声波电泳已成为一种前景广阔的微创透皮给药方法。然而,使用紧凑型低频超声换能器在皮肤表面有效诱导空化是一项重大挑战。本文介绍了一种能够在皮肤表面产生超声空化的低频超声换能器的改进设计。该换能器由一个压电陶瓷盘和一个碗形声学谐振器组成。在改进的换能器设计中加入了锥形缝隙结构,以放大振动位移并提高最大声压。基于有限元的模拟结果证实,共振频率为 78 kHz 时的最大声压比以前的设计提高了 1.9 倍。通过实验可以在凝胶表面观察到超声空化现象。此外,3 分钟的超声处理显著改善了咖啡因在人工膜上的渗透性。这些结果表明,这种传感器有望通过在皮肤表面产生超声空化来提高药物渗透性。
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引用次数: 0
Automatic segmentation of echocardiographic images using a shifted windows vision transformer architecture. 使用移位视窗视觉变换器架构自动分割超声心动图。
IF 1.3 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-09-13 DOI: 10.1088/2057-1976/ad7594
Souha Nemri, Luc Duong

Echocardiography is one the most commonly used imaging modalities for the diagnosis of congenital heart disease. Echocardiographic image analysis is crucial to obtaining accurate cardiac anatomy information. Semantic segmentation models can be used to precisely delimit the borders of the left ventricle, and allow an accurate and automatic identification of the region of interest, which can be extremely useful for cardiologists. In the field of computer vision, convolutional neural network (CNN) architectures remain dominant. Existing CNN approaches have proved highly efficient for the segmentation of various medical images over the past decade. However, these solutions usually struggle to capture long-range dependencies, especially when it comes to images with objects of different scales and complex structures. In this study, we present an efficient method for semantic segmentation of echocardiographic images that overcomes these challenges by leveraging the self-attention mechanism of the Transformer architecture. The proposed solution extracts long-range dependencies and efficiently processes objects at different scales, improving performance in a variety of tasks. We introduce Shifted Windows Transformer models (Swin Transformers), which encode both the content of anatomical structures and the relationship between them. Our solution combines the Swin Transformer and U-Net architectures, producing a U-shaped variant. The validation of the proposed method is performed with the EchoNet-Dynamic dataset used to train our model. The results show an accuracy of 0.97, a Dice coefficient of 0.87, and an Intersection over union (IoU) of 0.78. Swin Transformer models are promising for semantically segmenting echocardiographic images and may help assist cardiologists in automatically analyzing and measuring complex echocardiographic images.

超声心动图是诊断先天性心脏病最常用的成像方式之一。超声心动图图像分析对于获得准确的心脏解剖信息至关重要。语义分割模型可用于精确划分左心室的边界,并能准确和自动识别感兴趣区,这对心脏病专家来说非常有用。在计算机视觉领域,卷积神经网络(CNN) 架构仍占主导地位。在过去十年中,现有的卷积神经网络方法已被证明能高效地分割各种医学图像。然而,这些 解决方案通常难以捕捉长距离依赖关系,尤其是当涉及到 具有不同尺度和复杂结构的物体的图像时。在本研究中,我们提出了一种用于超声心动图图像语义分割的高效方法,该方法利用变形器架构的自我关注机制克服了这些挑战。所提出的解决方案可以提取长距离依赖关系,并高效处理不同尺度的对象,从而提高各种任务的性能。我们引入了移位窗口变换器模型(Swin Transformer),它既能编码解剖结构的内容,也能编码它们之间的关系。我们使用用于训练模型的 EchoNet-Dynamic 数据集对所提出的方法进行了验证。结果表明,该方法的准确率为 0.97,Dice 系数为 0.87,交集大于联合(Intersection over union,IoU)为 0.78。
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Biomedical Physics & Engineering Express
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