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Creation and clinical utility of a 3D atlas-based model for visualising brain nuclei targeted by MR-guided focused ultrasound thalamotomy for tremor. 磁共振引导聚焦超声丘脑切开术治疗震颤的脑核可视化3D图谱模型的创建和临床应用。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-01-08 DOI: 10.1088/2057-1976/ae356f
Ayesha Jameel, Joely Smith, Sena Akgun, Peter G Bain, Dipankar Nandi, Brynmor Jones, Rebecca A Quest, Wladyslaw Gedroyc, Nada Yousif

Magnetic resonance guided focused ultrasound (MRgFUS) thalamotomy is an established treatment for tremor. MRgFUS utilises ultrasound to non-invasively thermally ablate or "lesion" tremorgenic tissue. The success of treatment is contingent on accurate lesioning as assessed by tremor improvement and minimisation of adverse effects. However, coordinate planning and post-procedure lesion visualisation are difficult as the key targets, cannot be seen on standard clinical imaging. Thus, a computational tool is needed to aid target visualisation. A 3D atlas-based model was created using the Schaltenbrand-Wahren atlas. Key nuclei were manually delineated, interpolated and smoothed in 3D Slicer to create the model. Evaluation of targeting approaches across a seven-year period and patient-specific analyses of tremor treatments were performed. The anatomical position of MRgFUS lesions in the model were compared against varying clinical outcomes. The model provides an anatomical visualisation of how the change in targeting approach led to improved tremor suppression and a reduction in adverse effects for patients. This study demonstrates the successful development of a 3D atlas-based computational model of the brain target nuclei in MRgFUS thalamotomy and its clinical utility for tremor treatment analysis.

磁共振引导聚焦超声(MRgFUS)丘脑切开术是一种成熟的治疗震颤的方法。MRgFUS利用超声非侵入性热消融或“病变”震颤性组织。治疗的成功取决于通过震颤改善和不良反应最小化来评估的准确病变。然而,协调规划和术后病变可视化是困难的,因为关键目标不能在标准的临床影像学上看到。因此,需要一个计算工具来帮助目标可视化。使用Schaltenbrand-Wahren地图集创建了一个基于3D地图集的模型。在3D切片器中手动勾画、插值和平滑关键核以创建模型。对七年期间的靶向治疗方法进行了评估,并对震颤治疗进行了患者特异性分析。将模型中MRgFUS病变的解剖位置与不同的临床结果进行比较。该模型提供了一个解剖学可视化的改变如何靶向方法导致改善震颤抑制和减少患者的不良反应。本研究证明了MRgFUS丘脑切开术中基于三维图谱的脑靶核计算模型的成功开发及其在震颤治疗分析中的临床应用。
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引用次数: 0
Monte Carlo derivation of beam quality correction factors in proton beams: a comparison of Geant4 versions. 质子束中光束质量修正因子的蒙特卡罗推导:Geant4版本的比较。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-01-08 DOI: 10.1088/2057-1976/ae3571
Guillaume Gabriel Houyoux, Kilian-Simon Baumann, Nick Reynaert

Objective: In the revised version of the TRS-398 Code of Practice (CoP), Monte Carlo (MC) results were added to existing experimental data to derive the recommended beam quality correction factors (kQ) for ionisation chambers in proton beams. While part of these results were obtained from versions v10.3 and v10.4 of the Geant4 simulation tool, this paper demonstrates that the use of a more recent version, such as v11.2, can affect the value of the kQ factors.

Approach: The chamber-specific proton contributions (fQ) of the kQ factors were derived for four ionisation chambers using two different versions of the code, namely Geant4-v.10.3 and Geant4-v11.2. A comparison of the total absorbed dose values is performed, as well as the comparison of the dose contribution for primary and secondary particles.

Main results: Larger absorbed dose values per incident particle were derived with Geant4-v11.2 compared to Geant4-v10.3 especially for dose-to-air at high proton beam energies between 150 MeV and 250 MeV, leading to deviations in the kQ values up to 1%. These deviations are mainly due to a change in the physics of secondary helium ions for which the significant deviations between the Geant4 versions is the most stringent within the entrance window or the shell of the ionisation chambers.

Significance: Although significant deviations in the MC calculated fQ values were observed between the two Geant4 versions, the dominant uncertainty of the Wair values currently allows to achieve the agreement at the kQ level. As these values also agree with the current data presented in the TRS-398 CoP, it is not possible at the moment to discriminate between Geant4-v10.3 and Geant4-v11.2, which are therefore both suitable for kQ calculation.

目的:在修订的TRS-398操作规范(CoP)中,将蒙特卡罗(MC)结果添加到现有的实验数据中,以导出质子束电离室的推荐光束质量校正因子(kQ)。虽然这些结果的一部分是从Geant4模拟工具的v10.3和v10.4版本中获得的,但本文表明,使用更新的版本(如v11.2)可能会影响kQ因子的值。方法:使用两个不同版本的代码,即Geant4-v.10.3和Geant4-v11.2,推导了四个电离室的kQ因子的室特异性质子贡献(fQ)。进行了总吸收剂量值的比较,以及初级和次级粒子的剂量贡献的比较。主要结果:与Geant4-v10.3相比,使用Geant4-v11.2得到的每个入射粒子的吸收剂量值更大,特别是在高质子束能量在150 MeV和250 MeV之间的剂量对空气,导致kQ值偏差高达1%。这些偏差主要是由于二次氦离子的物理性质的变化,其中Geant4版本之间的显著偏差在电离室的入口窗口或外壳内最为严格。意义:尽管在两个Geant4版本中观察到MC计算的fQ值存在显著偏差,但Wair值的主要不确定性目前允许在kQ水平上实现一致。由于这些值也与TRS-398 CoP中提供的当前数据一致,因此目前无法区分Geant4-v10.3和Geant4-v11.2,因此它们都适用于kQ计算。
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引用次数: 0
LG-BiTCN: High-Fidelity Denoising for MCG in Strong Noise. LG-BiTCN:强噪声环境下MCG的高保真降噪。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-01-07 DOI: 10.1088/2057-1976/ae34b3
Aoyang Cai, Jianzhong Yang

Objective: This study investigates the denoising of low-cost magnetocardiography (MCG) signals recorded under strong noise conditions.

Approach: We propose LG-BiTCN (Least-Squares Generative Adversarial Network with Gated Bidirectional Temporal Convolutional Network), which combines long-range temporal feature extraction with adversarial training for signal denoising. Using clean MCG signals from the Kiel Cardio Database, we design a composite noise model consisting of baseline drift, 1/f (pink) noise, and white Gaussian noise.

Main results: In all composite noise conditions, LG-BiTCN achieves the best denoising performance. At -20 dB input signal-to-noise ratio (SNR) with baseline drift + 1/f noise + white noise, LG-BiTCN improves SNR by 24.21 dB, outperforming traditional algorithms by more than 8.84 dB. Additionally, LG-BiTCN demonstrates superior waveform fidelity, as reflected by higher SSIM and lower MAE_{QRS} compared to baseline methods. We find that at very low SNR, larger receptive field designs are more beneficial for improving denoising performance, while at higher SNR, smaller receptive fields better preserve signal details.

Significance: These results demonstrate that LG-BiTCN can effectively enhance MCG signal denoising under high-noise conditions, providing valuable insights for methods in unshielded MCG denoising tasks.

目的:研究强噪声条件下低成本心脏磁图(MCG)信号的去噪方法。方法:我们提出了LG-BiTCN(最小二乘生成对抗网络与门控双向时间卷积网络),它结合了远程时间特征提取和对抗训练来进行信号去噪。利用来自Kiel Cardio数据库的干净MCG信号,我们设计了一个由基线漂移、1/f(粉色)噪声和高斯白噪声组成的复合噪声模型。主要结果:在所有复合噪声条件下,LG-BiTCN的去噪性能最好。在基准漂移+ 1/f噪声+白噪声的-20 dB输入信噪比下,LG-BiTCN算法的信噪比提高了24.21 dB,比传统算法提高了8.84 dB以上。此外,与基线方法相比,LG-BiTCN具有更高的SSIM和更低的MAE_{QRS},从而显示出更好的波形保真度。我们发现,在非常低的信噪比下,较大的感受野设计更有利于提高去噪性能,而在较高的信噪比下,较小的感受野设计更能保留信号细节。意义:研究结果表明,LG-BiTCN可以有效增强高噪声条件下的MCG信号去噪,为非屏蔽MCG去噪任务的方法提供了有价值的见解。
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引用次数: 0
Research on combining motor imagery and somatosensory attentional orientation to enhance BCI performance. 运动意象与体感注意定向相结合提高脑机接口功能的研究。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-01-07 DOI: 10.1088/2057-1976/ae2512
Wei Jianqiu, Banghua Yang, Xiang Chen, Junhua Chen, Shuai Kuang

In this study, we propose a motor imagery(MI) method based on Somatosensory Attentional Orientation(SAO) to enhance the performance of MI based brain-computer interfaces (BCI). In this BCI system, participants perform unilateral hand MI tasks while maintaining attention to the corresponding hand, as if the wrist skin is actually receiving tactile stimulation(TS). A total of 44 participants were recruited and randomly divided into the experimental group(SAO and MI joint group, SMI group) and control group(MI group). The MI group performed right hand MI tasks, and two sessions were conducted, the content of the two experiments was identical. Each session was divided into two stages: the first stage including 1 run was the right hand MI mental task with TS on the right wrist, and the second stage including 6 runs was the right hand MI mental task without TS . For SAO group, first session was the same with the MI group. However, the second stage for SAO group was the right hand MI mental task with SAO. Compared with the first session, the performance in the first session was comparable between the MI group and SMI group, indicating similar MI abilities in both set of participants. For SAO group, A 6.5% performance enhancement was observed in the second session relative to the first session(p < 0.05). However, no significant improvement was observed in the MI group(p > 0.05), indicating no evidence of learning effect. EEG topographic mapping demonstrated robust bilateral hemispheric engagement when right hand MI mental task was performed for MI group. While in the SAO mental task, EEG exhibited clear hemispheric lateralization. This paradigm combining attention mechanisms with MI restructures the bilateral control modality inherent in conventional MI paradigms. As SAO paradigm engages endogenous cognitive processes, this approach augments corticomotor excitability during MI task, thereby improving BCI control performance.

在本研究中,我们提出了一种基于体感注意定向(SAO)的运动意象(MI)方法,以提高基于运动意象的脑机接口(BCI)的性能。在这个BCI系统中,参与者在执行单侧手部MI任务的同时保持对相应手的注意,就好像手腕皮肤实际上正在接受触觉刺激(TS)一样。共招募44名参与者,随机分为实验组(SAO与MI联合组、SMI组)和对照组(MI组)。MI组进行右手MI任务,并进行两次实验,两次实验的内容相同。每组实验分为两个阶段:第一阶段包括1组,为右手腕进行TS的右手MI心理任务;第二阶段包括6组,为不进行TS的右手MI心理任务。对于SAO组,第一次治疗与MI组相同。然而,SAO组的第二阶段是带有SAO的右手MI心理任务。与第一次会话相比,第一次会话的表现在MI组和SMI组之间具有可比性,表明两组参与者的MI能力相似。对于SAO组,第二阶段的学习成绩比第一阶段提高了6.5% (p0.05),表明没有证据表明有学习效果。脑电地形图显示,脑梗死组在执行右手脑梗死心理任务时,双脑半球参与程度较强。而在SAO心理任务中,脑电图显示明显的半球偏侧。该范式将注意机制与无意识行为相结合,重构了传统无意识行为范式中固有的双边控制模式。由于SAO范式涉及内源性认知过程,因此该方法增强了MI任务期间的皮质运动兴奋性,从而改善了BCI控制性能。
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引用次数: 0
Morphological and textural descriptors analysis of digital mammograms with radiological findings to support breast cancer detection using artificial neural networks. 利用人工神经网络对具有放射学发现的数字乳房x光片进行形态学和纹理描述符分析,以支持乳腺癌检测。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-01-06 DOI: 10.1088/2057-1976/ae2f65
F E Trujillo-Zamudio, M V Palma-Garzón, M E Hernández-Campos, E Y León-Marroquín, J A Márquez-Flores

Objective. To classify digital mammograms based on radiological findings using morphology and texture descriptors with artificial neural networks (ANN) for breast cancer detection.Approach.The mammography dataset from High Specialty Regional Hospital of Oaxaca (HRAEO) (median patient age (mpa), 48 years [interquartile range (IQR), 41-54 years]) with radiological findings was retrospectively analyzed. All patients underwent breast biopsy and were not previously treated. External testing was performed using mammograms from the National Cancer Institute (INCAN) (mpa: 47 years [IQR, 37-62 years]). The morphology was analyzed using a circularity descriptor (к), and the texture was analyzed using the mean height/width ratio of the extrema descriptor (ρ). These results were compared with cancer/benign histopathology, which was binarily classified using ANNs. The F1-score, Cohen's kappa (K), and area under the ROC curve (AUC) were employed as evaluation metrics, and the Wilcoxon rank-sum test was used for statistical analysis (h = 0, with p > 0.05, was considered as not statistically significant).Main results.216 raw mammograms from HRAEO and 33 mammograms from INCAN (95 + 16 breast cancer and 121 + 17 benign findings) were included. The best internal testing results were obtained with a one-hidden-layer ANN with 100 neurons, achieving a F1-score of 0.95, K of 0.91, and an AUC of 0.953 (95% confidence interval [CI]: 0.917, 0.977) (h = 0, p > 0.99). However, the external testing results were significantly lower: 0.38 F1-score, 0.02 K, and 0.509 AUC (95% CI: 0.344, 0.664) (h = 0, p = 0.14) due to not exactly meeting the inclusion criteria and possible demographic and spectrum bias, or domain-adaptation issues.Significance. The proposed morphology (к) and texture (ρ) descriptors show promise for detecting breast cancer in raw mammograms, with radiological findings, in a local context. However, their poor external performance highlights the need for substantial further work before this approach can be deemed suitable for broader diagnostic applications.

目的:利用形态学和纹理描述符结合人工神经网络(ANN)对数字乳房x线照片进行分类,用于乳腺癌检测。方法:回顾性分析来自瓦哈卡州高级专科地区医院(HRAEO)(患者年龄中位数(mpa), 48岁[四分位数间距(IQR), 41-54岁])的乳房x线摄影数据,并分析放射学结果。所有患者均行乳腺活检,且既往未接受治疗。外部检测采用国家癌症研究所(INCAN)提供的乳房x线照片(mpa: 47岁[IQR, 37-62岁])。形态学分析采用圆度描述符(),纹理分析采用极值描述符的平均高/宽比()。这些结果与使用人工神经网络进行二分类的癌/良性组织病理学进行比较。采用f1评分、Cohen’s kappa (K)、ROC曲线下面积(AUC)作为评价指标,采用Wilcoxon秩和检验进行统计学分析(h = 0, p < 0.05,认为无统计学意义)。主要结果:包括216张HRAEO乳房x线片和33张INCAN乳房x线片(95+16例乳腺癌,121+17例良性)。100个神经元的单隐层神经网络内测结果最好,f1得分为0.95,K为0.91,AUC为0.953(95%置信区间[CI]: 0.917, 0.977) (h=0, p = 0.99)。然而,由于不完全符合纳入标准和可能的人口统计学和光谱偏差,或领域适应问题,外部测试结果明显较低:0.38 f1评分,0.02 K和0.509 AUC (95% CI: 0.344, 0.664) (h=0, p=0.14)。意义:提出的形态学()和纹理()描述符显示了在原始乳房x线照片中检测乳腺癌的希望,并在当地进行放射学检查。然而,它们较差的外部表现突出表明,在这种方法被认为适合于更广泛的诊断应用之前,需要进行大量进一步的工作。
{"title":"Morphological and textural descriptors analysis of digital mammograms with radiological findings to support breast cancer detection using artificial neural networks.","authors":"F E Trujillo-Zamudio, M V Palma-Garzón, M E Hernández-Campos, E Y León-Marroquín, J A Márquez-Flores","doi":"10.1088/2057-1976/ae2f65","DOIUrl":"10.1088/2057-1976/ae2f65","url":null,"abstract":"<p><p><i>Objective</i>. To classify digital mammograms based on radiological findings using morphology and texture descriptors with artificial neural networks (ANN) for breast cancer detection.<i>Approach.</i>The mammography dataset from High Specialty Regional Hospital of Oaxaca (HRAEO) (median patient age (mpa), 48 years [interquartile range (IQR), 41-54 years]) with radiological findings was retrospectively analyzed. All patients underwent breast biopsy and were not previously treated. External testing was performed using mammograms from the National Cancer Institute (INCAN) (mpa: 47 years [IQR, 37-62 years]). The morphology was analyzed using a circularity descriptor (<i>к</i>), and the texture was analyzed using the mean height/width ratio of the extrema descriptor (<i>ρ</i>). These results were compared with cancer/benign histopathology, which was binarily classified using ANNs. The F1-score, Cohen's kappa (K), and area under the ROC curve (AUC) were employed as evaluation metrics, and the Wilcoxon rank-sum test was used for statistical analysis (h = 0, with p > 0.05, was considered as not statistically significant).<i>Main results.</i>216 raw mammograms from HRAEO and 33 mammograms from INCAN (95 + 16 breast cancer and 121 + 17 benign findings) were included. The best internal testing results were obtained with a one-hidden-layer ANN with 100 neurons, achieving a F1-score of 0.95, K of 0.91, and an AUC of 0.953 (95% confidence interval [CI]: 0.917, 0.977) (h = 0, p > 0.99). However, the external testing results were significantly lower: 0.38 F1-score, 0.02 K, and 0.509 AUC (95% CI: 0.344, 0.664) (h = 0, p = 0.14) due to not exactly meeting the inclusion criteria and possible demographic and spectrum bias, or domain-adaptation issues.<i>Significance</i>. The proposed morphology (<i>к</i>) and texture (<i>ρ</i>) descriptors show promise for detecting breast cancer in raw mammograms, with radiological findings, in a local context. However, their poor external performance highlights the need for substantial further work before this approach can be deemed suitable for broader diagnostic applications.</p>","PeriodicalId":8896,"journal":{"name":"Biomedical Physics & Engineering Express","volume":" ","pages":""},"PeriodicalIF":1.6,"publicationDate":"2026-01-06","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"145793120","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":0,"RegionCategory":"","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
Optimizing and evaluating robustness of AI for brain metastasis detection and segmentation via loss functions and multi-dataset training. 基于损失函数和多数据集训练的脑转移检测和分割的人工智能鲁棒性优化与评估。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-01-06 DOI: 10.1088/2057-1976/ae308a
Yiding Han, Piyush Pathak, Omar Awad, Abdallah S R Mohamed, Vincent Ugarte, Boran Zhou, Daniel Allen Hamstra, Alfredo Enrique Echeverria, Hasan Al Mekdash, Zaid Ali Siddiqui, Baozhou Sun

Purpose. Accurate detection and segmentation of brain metastases (BM) from MRI are critical for the appropriate management of cancer patients. This study investigates strategies to enhance the robustness of artificial intelligence (AI)-based BM detection and segmentation models.Method. A DeepMedic-based network with a loss function, tunable with a sensitivity/specificity tradeoff weighting factorα- was trained on T1 post-contrast MRI datasets from two institutions (514 patients, 4520 lesions). Robustness was evaluated on an external dataset from a third institution dataset (91 patients, 397 lesions), featuring ground truth annotations from two physicians. We investigated the impact of loss function weighting factor,αand training dataset combinations. Detection performance (sensitivity, precision, F1 score) and segmentation accuracy (Dice similarity, and 95% Hausdorff distance (HD95)) were evaluated using one physician's contours as the reference standard. The optimal AI model was then directly compared to the performance of the second physician.Results. Varyingαdemonstrated a trade-off between sensitivity (higherα) and precision (lowerα), withα= 0.5 yielding the best F1 score (0.80 versus 0.78 forα= 0.95 and 0.72 forα= 0.99) on the external dataset. The optimally trained model achieved detection performance comparable to the physician (F1: AI = 0.83, Physician = 0.83), but slightly underperformed in segmentation (Dice: 0.81 versus AI = 0.69; HD95: 3.0 mm versus AI = 4.94 mm, p < 0.05).Conclusion. The derived optimal model achieves detection and segmentation performance comparable to an expert physician in a parallel comparison.

目的:MRI对脑转移瘤的准确检测和分割对肿瘤患者的合理治疗至关重要。本研究探讨了增强基于人工智能(AI)的脑损伤检测和分割模型的鲁棒性的策略。方法:基于deepmedical的网络,具有损失函数,可通过敏感性/特异性权衡加权因子alpha进行调整-在来自两家机构(514名患者,4520个病变)的T1磁共振成像数据集上进行训练。鲁棒性在来自第三个机构数据集(91名患者,397个病变)的外部数据集上进行评估,其中包括来自两名医生的基本事实注释。我们研究了损失函数权重因子、alpha和训练数据集组合的影响。检测性能(灵敏度、精度、F1评分)和分割精度(Dice相似度和95% Hausdorff距离(HD95))以一名医生的轮廓作为参考标准进行评估。然后直接将最佳AI模型与第二位医生的表现进行比较。结果:改变α表明敏感性(较高α)和精度(较低α)之间存在权衡,α=0.5在外部数据集上产生最佳F1分数(0.80 vs. α=0.95的0.78和α=0.99的0.72)。经过优化训练的模型实现了与医生相当的检测性能(F1: AI=0.83, physician =0.83),但在分割方面的表现略差(Dice: 0.81 vs. AI=0.69; HD95: 3.0 mm vs. AI=4.94 mm, p
{"title":"Optimizing and evaluating robustness of AI for brain metastasis detection and segmentation via loss functions and multi-dataset training.","authors":"Yiding Han, Piyush Pathak, Omar Awad, Abdallah S R Mohamed, Vincent Ugarte, Boran Zhou, Daniel Allen Hamstra, Alfredo Enrique Echeverria, Hasan Al Mekdash, Zaid Ali Siddiqui, Baozhou Sun","doi":"10.1088/2057-1976/ae308a","DOIUrl":"10.1088/2057-1976/ae308a","url":null,"abstract":"<p><p><i>Purpose</i>. Accurate detection and segmentation of brain metastases (BM) from MRI are critical for the appropriate management of cancer patients. This study investigates strategies to enhance the robustness of artificial intelligence (AI)-based BM detection and segmentation models.<i>Method</i>. A DeepMedic-based network with a loss function, tunable with a sensitivity/specificity tradeoff weighting factorα- was trained on T1 post-contrast MRI datasets from two institutions (514 patients, 4520 lesions). Robustness was evaluated on an external dataset from a third institution dataset (91 patients, 397 lesions), featuring ground truth annotations from two physicians. We investigated the impact of loss function weighting factor,αand training dataset combinations. Detection performance (sensitivity, precision, F1 score) and segmentation accuracy (Dice similarity, and 95% Hausdorff distance (HD95)) were evaluated using one physician's contours as the reference standard. The optimal AI model was then directly compared to the performance of the second physician.<i>Results</i>. Varying<i>α</i>demonstrated a trade-off between sensitivity (higher<i>α</i>) and precision (lower<i>α</i>), with<i>α</i>= 0.5 yielding the best F1 score (0.80 versus 0.78 for<i>α</i>= 0.95 and 0.72 for<i>α</i>= 0.99) on the external dataset. The optimally trained model achieved detection performance comparable to the physician (F1: AI = 0.83, Physician = 0.83), but slightly underperformed in segmentation (Dice: 0.81 versus AI = 0.69; HD95: 3.0 mm versus AI = 4.94 mm, p < 0.05).<i>Conclusion</i>. The derived optimal model achieves detection and segmentation performance comparable to an expert physician in a parallel comparison.</p>","PeriodicalId":8896,"journal":{"name":"Biomedical Physics & Engineering Express","volume":" ","pages":""},"PeriodicalIF":1.6,"publicationDate":"2026-01-06","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":null,"resultStr":null,"platform":"Semanticscholar","paperid":"145817723","PeriodicalName":null,"FirstCategoryId":null,"ListUrlMain":null,"RegionNum":0,"RegionCategory":"","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":"","EPubDate":null,"PubModel":null,"JCR":null,"JCRName":null,"Score":null,"Total":0}
引用次数: 0
Patient outcome prognosis for external beam radiation therapy using CBCT-based radiomics: a systematic review. 基于cbct的放射组学对外束放射治疗患者预后的系统评价。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-01-06 DOI: 10.1088/2057-1976/ae308b
Chih-Wei Chang, Tonghe Wang, Richard L J Qiu, Xiang Li, Jochen Cammin, Kailin Yang, Yue-Houng Hu, Lei Ren, Ping Xia, Amit Sawant, Jacob Scott, Jeffrey Buchsbaum, Xiaofeng Yang

Objective. This review investigates the use of cone-beam computed tomography (CBCT) in conjunction with radiomics for external beam radiation therapy (EBRT) in cancer treatment. CBCT, which provides high-resolution, volumetric images, offers a promising tool for precision treatment delivery. By integrating radiomics and quantitative features extracted from CBCT, this review explores potential advancements in tumor characterization, treatment planning, and monitoring treatment responses in personalized cancer therapy.Approach. We conducted this systematic review using the PRISMA (preferred reporting items for systematic reviews and meta-analyses) framework. This study focused on CBCT-only radiomics applications, examining publications in PubMed, Embase, and Scopus databases. The inclusion criteria were strictly peer-reviewed journal articles, resulting in 29 studies being selected for analysis. These studies were divided into two main categories: (1) method development for treatment outcome prediction; (2) verification, validation, and uncertainty quantification (VVUQ) for CBCT-based radiomics.Main Results. The literature encompasses a range of investigations into CBCT-based radiomics for EBRT, covering different cancer types such as head-and-neck squamous cell carcinoma, non-small cell lung cancer, esophageal squamous cell cancer, hepatocellular carcinoma, prostate cancer, and rectal cancer. These studies used radiomics to predict outcomes including tumor response, local failure, tissue toxicity, and patient survival. VVUQ studies addressed the robustness and reproducibility of radiomic features. Furthermore, the emerging field of 4D-CBCT radiomics shows potential in improving image quality.Significance. CBCT-based radiomics presents a promising advancement in personalized radiotherapy, allowing for enhanced cancer prognosis and treatment adaptation. However, challenges of imaging quality and acquisition need to be addressed to ensure consistency and reliability. Future research should focus on standardizing imaging protocols and incorporating multi-institutional collaborations to further validate the clinical applicability of CBCT-based radiomics. Integration of this technology can potentially induce a paradigm shift in personalized cancer radiotherapy. New technologies promise to make CBCT even more valuable in the future.

目的:本文综述了锥形束计算机断层扫描(CBCT)与放射组学在体外束放射治疗(EBRT)中的应用。CBCT可以提供高分辨率的体积图像,为精确治疗提供了一种很有前途的工具。通过结合放射组学和从CBCT中提取的定量特征,本文探讨了在个性化癌症治疗中肿瘤表征、治疗计划和治疗反应监测方面的潜在进展。方法:我们使用PRISMA(系统评价和荟萃分析的首选报告项目)框架进行了本系统评价。本研究主要关注cbct放射组学应用,检查PubMed、Embase和Scopus数据库中的出版物。纳入标准是严格的同行评议的期刊文章,最终选择了29项研究进行分析。这些研究主要分为两大类:1)治疗结果预测的方法开发;2)基于cbct放射组学的验证、验证和不确定度量化(VVUQ)。主要结果:文献涵盖了一系列基于cbct的EBRT放射组学研究,涵盖了头颈鳞状细胞癌、非小细胞肺癌、食管鳞状细胞癌、肝癌、前列腺癌、直肠癌等不同类型的癌症。这些研究使用放射组学来预测预后,包括肿瘤反应、局部衰竭、组织毒性和患者生存。VVUQ研究解决了放射学特征的稳健性和可重复性。此外,4D-CBCT放射组学这一新兴领域在提高图像质量方面显示出潜力。意义:基于cbct的放射组学在个体化放疗方面取得了很好的进展,可以改善癌症预后和治疗适应。然而,需要解决成像质量和采集方面的挑战,以确保一致性和可靠性。未来的研究应侧重于标准化成像方案,并纳入多机构合作,以进一步验证基于cbct的放射组学的临床适用性。这项技术的整合可能会引发个性化癌症放疗的范式转变。新技术有望使CBCT在未来更有价值。
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引用次数: 0
Meta-analysis of mRNA dysregulation associated with Parkinson's disease and other neurological disorders. 与帕金森病和其他神经系统疾病相关的mRNA失调meta分析。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-01-06 DOI: 10.1088/2057-1976/ae1a8a
Tun Lin Aung, Ye Win Aung, Xiaoran Shi

Parkinson's disease (PD) is the second most common progressive neurodegenerative disorder, characterized by both motor and non-motor symptoms. In this study, we conducted a meta-analysis of gene expression profiles from four GEO datasets (comprising 59 PD patients and 41 participants control) to identify consistently differentially expressed messenger ribonucleic acids (DEmRNAs). We identified 5,495 down-regulated and 9,850 up-regulated DEmRNAs, of which 64 and 25, respectively, were common across all datasets. Functional enrichment analysis revealed that down-regulated DEmRNAs were primarily enriched in pathways related to neurotransmitter transport, dopamine biosynthesis, and dopaminergic synapse function, while up-regulated DEmRNAs were linked to cell cycle regulation and PI3K-Akt signaling. Notably, dysregulation of key genes, including SNCA (encodingα-synuclein), SLC6A3, TUBB, TUBB3, TUBB4B, and NDUFA9, were associated with PD as well as other neurodegenerative disorders, such as Alzheimer's, Huntington's, and Prion diseases. These DEmRNAs and pathways may offer potential biomarkers and therapeutic targets for PD and related neurological disorders.

帕金森病(PD)是第二常见的进行性神经退行性疾病,以运动和非运动症状为特征。在这项研究中,我们对来自四个GEO数据集(包括59名PD患者和41名对照组)的基因表达谱进行了荟萃分析,以确定一致差异表达的信使核糖核酸(demrna)。我们确定了5,495个下调和9,850个上调的demrna,其中64个和25个在所有数据集中都是常见的。功能富集分析显示,下调的demrna主要富集于与神经递质转运、多巴胺生物合成和多巴胺能突触功能相关的通路,而上调的demrna则与细胞周期调节和PI3K-Akt信号通路相关。值得注意的是,包括SNCA(编码α-突触核蛋白)、SLC6A3、TUBB、TUBB3、TUBB4B和NDUFA9在内的关键基因的失调与PD以及其他神经退行性疾病(如阿尔茨海默病、亨廷顿病和朊病毒病)有关。这些demrna和途径可能为帕金森病和相关神经系统疾病提供潜在的生物标志物和治疗靶点。
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引用次数: 0
Enhancing lumbar disc herniation classification through region-of-interest guidance and geometric shape features. 通过兴趣区引导和几何形状特征增强腰椎间盘突出症的分类。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-01-05 DOI: 10.1088/2057-1976/ae21e5
Cong Zhang, Kunjin He, Wei Xu, Xiaoqing Gu, Zhengming Chen, Yiping Weng

Lumbar disc herniation (LDH) is one of the most common degenerative diseases of the spine. Magnetic resonance image is the most effective way to detect LDH. The variety of shapes and blurred boundaries of diseased discs, along with the unclear classification basis of existing methods and their poor ability to differentiate between lesion types, make computer-aided diagnosis (CAD) of LDH challenging. We propose an enhanced classification of LDH through region-of-interest guidance and geometric shape features (RGGS-Net) to address these challenges. RGCG-Net establishes the connection between the segmentation of diseased lumbar disc and the classification of lesion types in LDH. A region-of-interest guided module, combined with region-of-interest supervision, is proposed to refine the features from the encoder. Weighted skip connections are used to balance the ratio between the original feature and the refined feature. Hierarchical supervision is used to reduce the training difficulty of the deep decoder and improve the final segmentation performance. Finally, the precise classification of LDH is achieved based on the geometrical features of its different types. Numerous experiments have demonstrated the effectiveness of the RGGS-Net. The classification accuracy of the RGGS-Net in the LDH classification task is 0.965. The Dice of the RGGS-Net reaches 0.957 in vertebrae and disc segmentation task.

腰椎间盘突出症(LDH)是脊柱最常见的退行性疾病之一。磁共振成像是检测LDH最有效的方法。病变椎间盘形状多样,界限模糊,加上现有方法分类基础不明确,区分病变类型的能力较差,给LDH的计算机辅助诊断(CAD)带来了挑战。为了解决这些问题,我们提出了一种通过兴趣区域引导和几何形状特征(RGGS-Net)来增强LDH分类的方法。RGCG-Net建立了LDH病变腰椎间盘分割与病变类型分类之间的联系。提出了一个兴趣区域引导模块,结合兴趣区域监督,从编码器中提炼特征。加权跳跃连接用于平衡原始特征和改进特征之间的比例。采用分层监督来降低深度解码器的训练难度,提高最终的分割性能。最后,根据其不同类型的几何特征,实现了LDH的精确分类。大量实验证明了rgs - net的有效性。RGGS-Net在LDH分类任务中的分类准确率为0.965。RGGS-Net在椎和椎间盘分割任务中的准确率达到0.957。
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引用次数: 0
Simulation of lung volume and SPECT count errors due to mismatch between SPECT and CT during free-breathing in lung perfusion scintigraphy. 肺灌注显像自由呼吸时SPECT与CT不匹配导致的肺容量和SPECT计数误差的模拟。
IF 1.6 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2026-01-05 DOI: 10.1088/2057-1976/ae2ebb
Yuta Nojima, Yoshihiro Yamazaki

Respiratory phase mismatch between single-photon emission computed tomography (SPECT) and computed tomography (CT) acquisition phases presents a challenge in lung perfusion scintigraphy using SPECT/CT. This study simulated lung volume and SPECT counts changes under free-breathing and breath-hold CT conditions compared to respiratory-synchronized acquisition. Chest 4D-CT images, divided into 10 respiratory phases, were used to generate lung, soft tissue, liver, and bone regions for each phase. A digital phantom was constructed via image processing using ImageJ. SPECT images were generated from these phantoms by employing the Prominence Processor to simulate projection data and reconstruct images. Simulations included a 'synchronized image,' where both SPECT and μMAP for attenuation correction were created in the same phase; a 'free-breathing image,' combining a free-breathing SPECT and μMAP; and a 'CT breath-hold image,' using phase-specific μMAPs with the free-breathing SPECT image for attenuation correction. Lung volumes and SPECT counts in the free-breathing and CT breath-hold images were compared with those in the synchronized image. By analyzing the relative errors caused by differences in the μMAPs, the study evaluated the impact of mismatch between SPECT and CT phases. Results indicated that lung volumes appeared reduced during inspiration and increased during expiration compared with synchronized images. No significant difference in the relative error was observed between the free-breathing and CT breath-hold images. Our findings revealed that in the quantitative evaluation of lung perfusion SPECT, varying the μ-map phase during free-breathing acquisition did not result in a significant improvement, suggesting that the mismatch between SPECT and CT had no statistically significant effect on quantitative accuracy. Compared with respiratory-gated SPECT, free-breathing acquisitions introduced potential errors of approximately 2.5% in lung volume measurement and 1.2% in SPECT counts. However, these errors were within acceptable tolerance limits for clinical diagnosis, indicating that free-breathing acquisition had minimal effects on diagnostic capability.

单光子发射计算机断层扫描(SPECT)和计算机断层扫描(CT)采集阶段的呼吸相位不匹配对SPECT/CT肺灌注成像提出了挑战。与呼吸同步获取相比,本研究模拟了自由呼吸和屏气CT条件下肺容量和SPECT计数的变化。胸部4D-CT图像分为10个呼吸期,用于生成每个阶段的肺、软组织、肝脏和骨骼区域。利用ImageJ进行图像处理,构建数字幻像。利用突出处理器模拟投影数据并重建图像,从这些幻象中生成SPECT图像。模拟包括“同步图像”,其中用于衰减校正的SPECT和μMAP在同一相位创建;结合了自由呼吸SPECT和μMAP的“自由呼吸图像”;以及“CT屏息图像”,使用相位特定μ map与自由呼吸的SPECT图像进行衰减校正。将自由呼吸和CT屏气图像中的肺体积和SPECT计数与同步图像中的肺体积和SPECT计数进行比较。通过分析μ map差异引起的相对误差,评价SPECT与CT相不匹配的影响。结果表明,与同步图像相比,吸气时肺体积减小,呼气时肺体积增大。自由呼吸图像与CT屏气图像的相对误差无显著差异。我们的研究结果显示,在肺灌注SPECT的定量评估中,改变自由呼吸采集时的μ-map相位并没有导致明显的改善,这表明SPECT与CT的不匹配对定量准确性没有统计学意义的影响。与呼吸门控SPECT相比,自由呼吸采集在肺体积测量中引入了大约2.5%的潜在误差,在SPECT计数中引入了1.2%的潜在误差。然而,这些错误在临床诊断可接受的容忍范围内,表明获得自由呼吸对诊断能力的影响最小。
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引用次数: 0
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Biomedical Physics & Engineering Express
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