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An effective no-reference image quality index prediction with a hybrid Artificial Intelligence approach for denoised MRI images 用混合人工智能方法有效预测去噪磁共振成像的无参考图像质量指标
IF 2.7 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-08-12 DOI: 10.1186/s12880-024-01387-1
Prianka Ramachandran Radhabai, Kavitha KVN, Ashok Shanmugam, Agbotiname Lucky Imoize
As the quantity and significance of digital pictures in the medical industry continue to increase, Image Quality Assessment (IQA) has recently become a prevalent subject in the research community. Due to the wide range of distortions that Magnetic Resonance Images (MRI) can experience and the wide variety of information they contain, No-Reference Image Quality Assessment (NR-IQA) has always been a challenging study issue. In an attempt to address this issue, a novel hybrid Artificial Intelligence (AI) is proposed to analyze NR-IQ in massive MRI data. First, the features from the denoised MRI images are extracted using the gray level run length matrix (GLRLM) and EfficientNet B7 algorithm. Next, the Multi-Objective Reptile Search Algorithm (MRSA) was proposed for optimal feature vector selection. Then, the Self-evolving Deep Belief Fuzzy Neural network (SDBFN) algorithm was proposed for the effective NR-IQ analysis. The implementation of this research is executed using MATLAB software. The simulation results are compared with the various conventional methods in terms of correlation coefficient (PLCC), Root Mean Square Error (RMSE), Spearman Rank Order Correlation Coefficient (SROCC) and Kendall Rank Order Correlation Coefficient (KROCC), and Mean Absolute Error (MAE). In addition, our proposed approach yielded a quality number approximately we achieved significant 20% improvement than existing methods, with the PLCC parameter showing a notable increase compared to current techniques. Moreover, the RMSE number decreased by 12% when compared to existing methods. Graphical representations indicated mean MAE values of 0.02 for MRI knee dataset, 0.09 for MRI brain dataset, and 0.098 for MRI breast dataset, showcasing significantly lower MAE values compared to the baseline models.
随着医疗行业中数字图像的数量和重要性不断增加,图像质量评估(IQA)近来已成为研究界的一个热门话题。由于磁共振成像(MRI)会出现各种失真,且包含的信息种类繁多,无参考图像质量评估(NR-IQA)一直是一个具有挑战性的研究课题。为了解决这个问题,我们提出了一种新型混合人工智能(AI)来分析海量 MRI 数据中的无参考图像质量。首先,使用灰度运行长度矩阵(GLRLM)和 EfficientNet B7 算法提取去噪核磁共振图像的特征。接着,提出了多目标爬行搜索算法(MRSA),用于优化特征向量选择。然后,提出了自演化深度信念模糊神经网络(SDBFN)算法,用于有效的 NR-IQ 分析。本研究使用 MATLAB 软件实现。模拟结果在相关系数 (PLCC)、均方根误差 (RMSE)、斯皮尔曼秩相关系数 (SROCC) 和肯德尔秩相关系数 (KROCC) 以及平均绝对误差 (MAE) 方面与各种传统方法进行了比较。此外,与现有方法相比,我们提出的方法产生的质量数提高了约 20%,其中 PLCC 参数与现有技术相比有显著提高。此外,与现有方法相比,RMSE 下降了 12%。图表显示,核磁共振成像膝关节数据集的平均 MAE 值为 0.02,核磁共振成像脑数据集的平均 MAE 值为 0.09,核磁共振成像乳腺数据集的平均 MAE 值为 0.098,与基线模型相比,MAE 值明显降低。
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引用次数: 0
Dual-energy computed tomography with new virtual monoenergetic image reconstruction enhances prostate lesion image quality and improves the diagnostic efficacy for prostate cancer 采用新型虚拟单能图像重建技术的双能计算机断层扫描提高了前列腺病灶的图像质量,改善了前列腺癌的诊断效果
IF 2.7 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-08-12 DOI: 10.1186/s12880-024-01393-3
Nina Fan, Xiaofeng Chen, Yulin Li, Zhiqiang Zhu, Xiangguang Chen, Zhiqi Yang, Jiada Yang
Prostate cancer is one of the most common malignant tumors in middle-aged and elderly men and carries significant prognostic implications, and recent studies suggest that dual-energy computed tomography (DECT) utilizing new virtual monoenergetic images can enhance cancer detection rates. This study aimed to assess the impact of virtual monoenergetic images reconstructed from DECT arterial phase scans on the image quality of prostate lesions and their diagnostic performance for prostate cancer. We conducted a retrospective analysis of 83 patients with prostate cancer or prostatic hyperplasia who underwent DECT scans at Meizhou People’s Hospital between July 2019 and December 2023. The variables analyzed included age, tumor diameter and serum prostate-specific antigen (PSA) levels, among others. We also compared CT values, signal-to-noise ratio (SNR), subjective image quality ratings, and contrast-to-noise ratio (CNR) between virtual monoenergetic images (40–100 keV) and conventional linear blending images. Receiver operating characteristic (ROC) curve analyses were performed to evaluate the diagnostic efficacy of virtual monoenergetic images (40 keV and 50 keV) compared to conventional images. Virtual monoenergetic images at 40 keV showed significantly higher CT values (168.19 ± 57.14) compared to conventional linear blending images (66.66 ± 15.5) for prostate cancer (P < 0.001). The 50 keV images also demonstrated elevated CT values (121.73 ± 39.21) compared to conventional images (P < 0.001). CNR values for the 40 keV (3.81 ± 2.13) and 50 keV (2.95 ± 1.50) groups were significantly higher than the conventional blending group (P < 0.001). Subjective evaluations indicated markedly better image quality scores for 40 keV (median score of 5) and 50 keV (median score of 5) images compared to conventional images (P < 0.05). ROC curve analysis revealed superior diagnostic accuracy for 40 keV (AUC: 0.910) and 50 keV (AUC: 0.910) images based on CT values compared to conventional images (AUC: 0.849). Virtual monoenergetic images reconstructed at 40 keV and 50 keV from DECT arterial phase scans substantially enhance the image quality of prostate lesions and improve diagnostic efficacy for prostate cancer.
前列腺癌是中老年男性最常见的恶性肿瘤之一,对预后有重要影响,最近的研究表明,利用新型虚拟单能图像的双能计算机断层扫描(DECT)可提高癌症检出率。本研究旨在评估由 DECT 动脉期扫描重建的虚拟单能图像对前列腺病变图像质量及其前列腺癌诊断性能的影响。我们对2019年7月至2023年12月期间在梅州市人民医院接受DECT扫描的83名前列腺癌或前列腺增生患者进行了回顾性分析。分析的变量包括年龄、肿瘤直径和血清前列腺特异性抗原(PSA)水平等。我们还比较了虚拟单能量图像(40-100 keV)和传统线性混合图像之间的 CT 值、信噪比(SNR)、主观图像质量评分和对比度-噪声比(CNR)。为了评估虚拟单能量图像(40 keV 和 50 keV)与传统图像相比的诊断效果,进行了接收者操作特征(ROC)曲线分析。与传统线性混合图像(66.66 ± 15.5)相比,40 keV 虚拟单能量图像显示的前列腺癌 CT 值(168.19 ± 57.14)明显更高(P < 0.001)。50 keV 图像的 CT 值(121.73 ± 39.21)也高于传统图像(P < 0.001)。40 keV 组(3.81 ± 2.13)和 50 keV 组(2.95 ± 1.50)的 CNR 值明显高于传统混合组(P < 0.001)。主观评价显示,与传统图像相比,40 keV(中位数为 5 分)和 50 keV(中位数为 5 分)图像的图像质量得分明显更高(P < 0.05)。ROC 曲线分析显示,基于 CT 值的 40 keV(AUC:0.910)和 50 keV(AUC:0.910)图像的诊断准确性优于传统图像(AUC:0.849)。从 DECT 动脉相扫描重建的 40 keV 和 50 keV 虚拟单能量图像大大提高了前列腺病变的图像质量,提高了前列腺癌的诊断效果。
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引用次数: 0
Gd-EOB-DTPA enhanced MRI nomogram model to differentiate hepatocellular carcinoma and focal nodular hyperplasia both showing iso- or hyperintensity in the hepatobiliary phase 钆-EOB-DTPA增强型磁共振成像提名图模型,用于区分肝胆相均呈等密度或高密度的肝细胞癌和局灶性结节增生症
IF 2.7 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-08-12 DOI: 10.1186/s12880-024-01382-6
Hao-yu Mao, Bin-qing Shen, Ji-yun Zhang, Tao Zhang, Wu Cai, Yan-fen Fan, Xi-ming Wang, Yi-xing Yu, Chun-hong Hu
To develop and validate a nomogram model based on Gd-EOB-DTPA enhanced MRI for differentiation between hepatocellular carcinoma (HCC) and focal nodular hyperplasia (FNH) showing iso- or hyperintensity in the hepatobiliary phase (HBP). A total of 75 patients with 49 HCCs and 26 FNHs randomly divided into a training cohort (n = 52: 34 HCC; 18 FNH) and an internal validation cohort (n = 23: 15 HCC; 8 FNH). A total of 37 patients (n = 37: 25 HCC; 12 FNH) acted as an external test cohort. The clinical and imaging characteristics between HCC and FNH groups in the training cohort were compared. The statistically significant parameters were included into the FAE software, and a multivariate logistic regression classifier was used to identify independent predictors and establish a nomogram model. Receiver operating characteristic (ROC) curves were used to evaluate the prediction ability of the model, while the calibration and decision curves were used for model validation. Subanalysis was used to compare qualitative and quantitative characteristics of patients with chronic hepatitis and cirrhosis between the HCC and FNH groups. In the training cohort, gender, age, enhancement rate in the arterial phase (AP), focal defects in uptake were significant predictors for HCC showing iso- or hyperintensity in the HBP. In the training cohort, area under the curve (AUC), sensitivity and specificity of the nomogram model were 0.989(95%CI: 0.967-1.000), 97.1% and 94.4%. In the internal validation cohort, the above three indicators were 0.917(95%CI: 0.782-1.000), 93.3% and 87.5%. In the external test cohort, the above three indicators were 0.960(95%CI: 0.905-1.000), 84.0% and 100.0%. The results of subanalysis showed that age was the independent predictor in the patients with chronic hepatitis and cirrhosis between HCC and FNH groups. Gd-EOB-DTPA enhanced MRI nomogram model may be useful for discriminating HCC and FNH showing iso- or hyperintensity in the HBP before surgery.
目的:开发并验证一种基于Gd-EOB-DTPA增强磁共振成像的提名图模型,用于区分肝细胞癌(HCC)和在肝胆相(HBP)中显示等密度或高密度的局灶性结节增生(FNH)。共 75 名患者,其中 49 名 HCC,26 名 FNH,随机分为训练队列(n = 52:34 名 HCC;18 名 FNH)和内部验证队列(n = 23:15 名 HCC;8 名 FNH)。共有 37 名患者(n = 37:25 名 HCC;12 名 FNH)作为外部测试队列。对训练队列中 HCC 组和 FNH 组的临床和成像特征进行了比较。具有统计学意义的参数被纳入 FAE 软件,并使用多元逻辑回归分类器确定独立的预测因素,建立提名图模型。接收者操作特征曲线(ROC)用于评估模型的预测能力,而校准和决策曲线则用于模型验证。子分析用于比较 HCC 组和 FNH 组慢性肝炎和肝硬化患者的定性和定量特征。在训练队列中,性别、年龄、动脉期(AP)增强率、摄取灶缺陷是 HCC 在 HBP 中显示等或高密度的重要预测因素。在训练队列中,提名图模型的曲线下面积(AUC)、灵敏度和特异性分别为 0.989(95%CI:0.967-1.000)、97.1% 和 94.4%。在内部验证队列中,上述三项指标分别为 0.917(95%CI:0.782-1.000)、93.3% 和 87.5%。在外部检验队列中,上述三项指标分别为 0.960(95%CI:0.905-1.000)、84.0% 和 100.0%。亚分析结果显示,年龄是 HCC 组和 FNH 组慢性肝炎和肝硬化患者的独立预测因素。Gd-EOB-DTPA增强磁共振成像提名图模型可能有助于区分手术前HBP中出现等或高密度的HCC和FNH。
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引用次数: 0
Retinex theory-based nonlinear luminance enhancement and denoising for low-light endoscopic images. 基于 Retinex 理论的低照度内窥镜图像非线性亮度增强和去噪。
IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-08-09 DOI: 10.1186/s12880-024-01386-2
En Mou, Huiqian Wang, Xiaodong Chen, Zhangyong Li, Enling Cao, Yuanyuan Chen, Zhiwei Huang, Yu Pang

Background: The quality of low-light endoscopic images involves applications in medical disciplines such as physiology and anatomy for the identification and judgement of tissue structures. Due to the use of point light sources and the constraints of narrow physiological structures, medical endoscopic images display uneven brightness, low contrast, and a lack of texture information, presenting diagnostic challenges for physicians.

Methods: In this paper, a nonlinear brightness enhancement and denoising network based on Retinex theory is designed to improve the brightness and details of low-light endoscopic images. The nonlinear luminance enhancement module uses higher-order curvilinear functions to improve overall brightness; the dual-attention denoising module captures detailed features of anatomical structures; and the color loss function mitigates color distortion.

Results: Experimental results on the Endo4IE dataset demonstrate that the proposed method outperforms existing state-of-the-art methods in terms of Peak Signal-to-Noise Ratio (PSNR), Structural Similarity (SSIM), and Learned Perceptual Image Patch Similarity (LPIPS). The PSNR is 27.2202, SSIM is 0.8342, and the LPIPS is 0.1492. It provides a method to enhance image quality in clinical diagnosis and treatment.

Conclusions: It offers an efficient method to enhance images captured by endoscopes and offers valuable insights into intricate human physiological structures, which can effectively assist clinical diagnosis and treatment.

背景:低照度内窥镜图像的质量涉及生理学和解剖学等医学学科的应用,用于识别和判断组织结构。由于使用点光源和狭窄生理结构的限制,医学内窥镜图像显示出亮度不均匀、对比度低、纹理信息缺乏等问题,给医生的诊断带来了挑战:本文设计了一种基于 Retinex 理论的非线性亮度增强和去噪网络,以改善低照度内窥镜图像的亮度和细节。非线性亮度增强模块使用高阶曲线函数提高整体亮度;双注意去噪模块捕捉解剖结构的细节特征;色彩损失函数减轻色彩失真:在 Endo4IE 数据集上的实验结果表明,所提出的方法在峰值信噪比(PSNR)、结构相似性(SSIM)和学习感知图像补丁相似性(LPIPS)方面都优于现有的先进方法。PSNR 为 27.2202,SSIM 为 0.8342,LPIPS 为 0.1492。它为临床诊断和治疗提供了一种提高图像质量的方法:结论:它提供了一种有效的方法来增强内窥镜捕获的图像,并为了解复杂的人体生理结构提供了宝贵的信息,从而有效地帮助临床诊断和治疗。
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引用次数: 0
Adaptive Mish activation and ranger optimizer-based SEA-ResNet50 model with explainable AI for multiclass classification of COVID-19 chest X-ray images. 基于自适应 Mish 激活和游侠优化器的 SEA-ResNet50 模型与可解释人工智能用于 COVID-19 胸部 X 光图像的多类分类。
IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-08-09 DOI: 10.1186/s12880-024-01394-2
S R Sannasi Chakravarthy, N Bharanidharan, C Vinothini, Venkatesan Vinoth Kumar, T R Mahesh, Suresh Guluwadi

A recent global health crisis, COVID-19 is a significant global health crisis that has profoundly affected lifestyles. The detection of such diseases from similar thoracic anomalies using medical images is a challenging task. Thus, the requirement of an end-to-end automated system is vastly necessary in clinical treatments. In this way, the work proposes a Squeeze-and-Excitation Attention-based ResNet50 (SEA-ResNet50) model for detecting COVID-19 utilizing chest X-ray data. Here, the idea lies in improving the residual units of ResNet50 using the squeeze-and-excitation attention mechanism. For further enhancement, the Ranger optimizer and adaptive Mish activation function are employed to improve the feature learning of the SEA-ResNet50 model. For evaluation, two publicly available COVID-19 radiographic datasets are utilized. The chest X-ray input images are augmented during experimentation for robust evaluation against four output classes namely normal, pneumonia, lung opacity, and COVID-19. Then a comparative study is done for the SEA-ResNet50 model against VGG-16, Xception, ResNet18, ResNet50, and DenseNet121 architectures. The proposed framework of SEA-ResNet50 together with the Ranger optimizer and adaptive Mish activation provided maximum classification accuracies of 98.38% (multiclass) and 99.29% (binary classification) as compared with the existing CNN architectures. The proposed method achieved the highest Kappa validation scores of 0.975 (multiclass) and 0.98 (binary classification) over others. Furthermore, the visualization of the saliency maps of the abnormal regions is represented using the explainable artificial intelligence (XAI) model, thereby enhancing interpretability in disease diagnosis.

COVID-19 是最近发生的一场全球健康危机,对人们的生活方式产生了深远影响。利用医学图像从类似的胸部异常中检测出此类疾病是一项具有挑战性的任务。因此,在临床治疗中,对端到端自动化系统的要求是非常必要的。因此,本研究提出了一种基于挤压和激发注意的 ResNet50(SEA-ResNet50)模型,用于利用胸部 X 光数据检测 COVID-19。其思路在于利用挤压-激发注意机制改进 ResNet50 的残差单元。为了进一步提高效果,还采用了 Ranger 优化器和自适应 Mish 激活函数来改进 SEA-ResNet50 模型的特征学习。评估中使用了两个公开的 COVID-19 放射学数据集。在实验过程中,对胸部 X 光输入图像进行了增强,以针对四个输出类别(正常、肺炎、肺不张和 COVID-19)进行稳健评估。然后,将 SEA-ResNet50 模型与 VGG-16、Xception、ResNet18、ResNet50 和 DenseNet121 架构进行比较研究。与现有的 CNN 架构相比,SEA-ResNet50 的拟议框架与 Ranger 优化器和自适应 Mish 激活一起提供了 98.38% 的最高分类准确率(多分类)和 99.29% 的最高分类准确率(二元分类)。与其他方法相比,所提出的方法获得了最高的 Kappa 验证分数,分别为 0.975(多分类)和 0.98(二元分类)。此外,异常区域显著性图的可视化采用了可解释人工智能(XAI)模型,从而提高了疾病诊断的可解释性。
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引用次数: 0
Automated system utilizing non-invasive technique mammograms for breast cancer detection. 利用无创技术乳房 X 射线摄影检测乳腺癌的自动化系统。
IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-08-07 DOI: 10.1186/s12880-024-01363-9
Hazem M Ammar, Ashraf F Tammam, Ibrahim M Selim, Mohamed Eassa

In order to increase the likelihood of obtaining treatment and achieving a complete recovery, early illness identification and diagnosis are crucial. Artificial intelligence is helpful with this process by allowing us to rapidly start the necessary protocol for treatment in the early stages of disease development. Artificial intelligence is a major contributor to the improvement of medical treatment for patients. In order to prevent and foresee this problem on the individual, family, and generational levels, Monitoring the patient's therapy and recovery is crucial. This study's objective is to outline a non-invasive method for using mammograms to detect breast abnormalities, classify breast disorders, and identify cancerous or benign tumor tissue in the breast. We used classification models on a dataset that has been pre-processed so that the number of samples is balanced, unlike previous work on the same dataset. Identifying cancerous or benign breast tissue requires the use of supervised learning techniques and algorithms, such as random forest (RF) and decision tree (DT) classifiers, to examine up to thirty features, such as breast size, mass, diameter, circumference, and the nature of the tumor (solid or cystic). To ascertain if the tissue is malignant or benign, the examination's findings are employed. These features are mostly what determines how effectively anything may be categorized. The DT classifier was able to get a score of 95.32%, while the RF satisfied a far higher 98.83 percent.

为了提高获得治疗和完全康复的可能性,早期疾病识别和诊断至关重要。人工智能有助于这一过程,使我们能够在疾病发展的早期阶段迅速启动必要的治疗方案。人工智能是改善患者医疗的重要促进因素。为了从个人、家庭和代际层面预防和预见这一问题,监测患者的治疗和康复情况至关重要。本研究的目的是概述一种使用乳房 X 光照片检测乳房异常、对乳房疾病进行分类以及识别乳房中癌症或良性肿瘤组织的非侵入性方法。我们在一个经过预处理的数据集上使用了分类模型,使样本数量均衡,这与之前在同一数据集上的工作不同。识别乳腺组织的癌变或良性需要使用监督学习技术和算法,如随机森林(RF)和决策树(DT)分类器,以检查多达 30 个特征,如乳房大小、质量、直径、周长和肿瘤性质(实性或囊性)。为了确定组织是恶性还是良性,检查结果被采用。这些特征在很大程度上决定了对任何事物进行分类的有效性。DT 分类器的得分率为 95.32%,而 RF 的得分率则高达 98.83%。
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引用次数: 0
Metal implant segmentation in CT images based on diffusion model. 基于扩散模型的 CT 图像中的金属植入物分割。
IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-08-06 DOI: 10.1186/s12880-024-01379-1
Kai Xie, Liugang Gao, Yutao Zhang, Heng Zhang, Jiawei Sun, Tao Lin, Jianfeng Sui, Xinye Ni

Background: Computed tomography (CT) is widely in clinics and is affected by metal implants. Metal segmentation is crucial for metal artifact correction, and the common threshold method often fails to accurately segment metals.

Purpose: This study aims to segment metal implants in CT images using a diffusion model and further validate it with clinical artifact images and phantom images of known size.

Methods: A retrospective study was conducted on 100 patients who received radiation therapy without metal artifacts, and simulated artifact data were generated using publicly available mask data. The study utilized 11,280 slices for training and verification, and 2,820 slices for testing. Metal mask segmentation was performed using DiffSeg, a diffusion model incorporating conditional dynamic coding and a global frequency parser (GFParser). Conditional dynamic coding fuses the current segmentation mask and prior images at multiple scales, while GFParser helps eliminate high-frequency noise in the mask. Clinical artifact images and phantom images are also used for model validation.

Results: Compared with the ground truth, the accuracy of DiffSeg for metal segmentation of simulated data was 97.89% and that of DSC was 95.45%. The mask shape obtained by threshold segmentation covered the ground truth and DSCs were 82.92% and 84.19% for threshold segmentation based on 2500 HU and 3000 HU. Evaluation metrics and visualization results show that DiffSeg performs better than other classical deep learning networks, especially for clinical CT, artifact data, and phantom data.

Conclusion: DiffSeg efficiently and robustly segments metal masks in artifact data with conditional dynamic coding and GFParser. Future work will involve embedding the metal segmentation model in metal artifact reduction to improve the reduction effect.

背景:计算机断层扫描(CT)广泛应用于临床,并受到金属植入物的影响。目的:本研究旨在利用扩散模型分割 CT 图像中的金属植入物,并通过临床伪影图像和已知大小的模型图像进一步验证该模型:方法:对 100 名接受放射治疗但无金属伪影的患者进行回顾性研究,并使用公开的掩膜数据生成模拟伪影数据。研究利用 11,280 张切片进行训练和验证,利用 2,820 张切片进行测试。金属掩膜分割使用 DiffSeg 进行,这是一种融合了条件动态编码和全局频率解析器 (GFParser) 的扩散模型。条件动态编码融合了当前分割掩膜和多个尺度的先前图像,而全频解析器则有助于消除掩膜中的高频噪声。临床伪影图像和幻影图像也用于模型验证:与基本事实相比,DiffSeg 对模拟数据进行金属分割的准确率为 97.89%,DSC 为 95.45%。在基于 2500 HU 和 3000 HU 的阈值分割中,通过阈值分割获得的掩膜形状覆盖了地面实况和 DSC,分别为 82.92% 和 84.19%。评估指标和可视化结果表明,DiffSeg 的表现优于其他经典深度学习网络,尤其是在临床 CT、伪影数据和幻影数据方面:DiffSeg 利用条件动态编码和 GFParser 对伪影数据中的金属掩膜进行了高效、稳健的分割。未来的工作将涉及在金属伪影还原中嵌入金属分割模型,以提高还原效果。
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引用次数: 0
Bone metastasis prediction in non-small-cell lung cancer: primary CT-based radiomics signature and clinical feature. 非小细胞肺癌骨转移预测:基于原发性 CT 的放射组学特征和临床特征
IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-08-05 DOI: 10.1186/s12880-024-01383-5
Zheng Liu, Rui Yin, Wenjuan Ma, Zhijun Li, Yijun Guo, Haixiao Wu, Yile Lin, Vladimir P Chekhonin, Karl Peltzer, Huiyang Li, Min Mao, Xiqi Jian, Chao Zhang

Background: Radiomics provided opportunities to quantify the tumor phenotype non-invasively. This study extracted contrast-enhanced computed tomography (CECT) radiomic signatures and evaluated clinical features of bone metastasis in non-small-cell lung cancer (NSCLC). With the combination of the revealed radiomics and clinical features, the predictive modeling on bone metastasis in NSCLC was established.

Methods: A total of 318 patients with NSCLC at the Tianjin Medical University Cancer Institute & Hospital was enrolled between January 2009 and December 2019, which included a feature-learning cohort (n = 223) and a validation cohort (n = 95). We trained a radiomics model in 318 CECT images from feature-learning cohort to extract the radiomics features of bone metastasis in NSCLC. The Kruskal-Wallis and the least absolute shrinkage and selection operator regression (LASSO) were used to select bone metastasis-related features and construct the CT radiomics score (Rad-score). Multivariate logistic regression was performed with the combination of the Rad-score and clinical data. A predictive nomogram was subsequently developed.

Results: Radiomics models using CECT scans were significant on bone metastasis prediction in NSCLC. Model performance was enhanced with each information into the model. The radiomics nomogram achieved an AUC of 0.745 (95% confidence interval [CI]: 0.68,0.80) on predicting bone metastasis in the training set and an AUC of 0.808(95% confidence interval [CI]: 0.71,0.88) in the validation set.

Conclusion: The revealed invisible image features were of significance on guiding bone metastasis prediction in NSCLC. Based on the combination of the image features and clinical characteristics, the predictive nomogram was established. Such nomogram can be used for the auxiliary screening of bone metastasis in NSCLC.

背景:放射组学为无创量化肿瘤表型提供了机会。这项研究提取了对比增强计算机断层扫描(CECT)放射组学特征,并评估了非小细胞肺癌(NSCLC)骨转移的临床特征。结合所揭示的放射组学和临床特征,建立了非小细胞肺癌骨转移的预测模型:方法:2009年1月至2019年12月,天津医科大学肿瘤医院共纳入318例NSCLC患者,其中包括特征学习队列(n = 223)和验证队列(n = 95)。我们在特征学习队列的318张CECT图像中训练了放射组学模型,以提取NSCLC骨转移的放射组学特征。我们使用 Kruskal-Wallis 和最小绝对收缩与选择算子回归(LASSO)来选择骨转移相关特征并构建 CT 放射组学评分(Rad-score)。结合 Rad 评分和临床数据进行多变量逻辑回归。结果:使用CECT建立的放射组学模型可预测骨转移:结果:使用CECT扫描的放射组学模型对NSCLC骨转移的预测效果显著。模型中的每项信息都提高了模型的性能。在训练集中,放射组学提名图预测骨转移的AUC为0.745(95%置信区间[CI]:0.68,0.80),在验证集中,AUC为0.808(95%置信区间[CI]:0.71,0.88):结论:所揭示的隐形图像特征对预测 NSCLC 骨转移具有重要指导意义。在结合图像特征和临床特征的基础上,建立了预测提名图。这种提名图可用于 NSCLC 骨转移的辅助筛查。
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引用次数: 0
A radiomics model utilizing CT for the early detection and diagnosis of severe community-acquired pneumonia. 利用 CT 早期检测和诊断重症社区获得性肺炎的放射组学模型。
IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-08-05 DOI: 10.1186/s12880-024-01370-w
Jia Jiang, Siqin Chen, Shaofeng Zhang, Yaling Zeng, Jiayi Liu, Wei Lei, Xiang Liu, Xin Chen, Qiang Xiao

Background: Community-Acquired Pneumonia (CAP) remains a significant global health concern, with a subset of cases progressing to Severe Community-Acquired Pneumonia (SCAP). This study aims to develop and validate a CT-based radiomics model for the early detection of SCAP to enable timely intervention and improve patient outcomes.

Methods: A retrospective study was conducted on 115 CAP and SCAP patients at Southern Medical University Shunde Hospital from January to December 2021. Using the Pyradiomics package, 107 radiomic features were extracted from CT scans, refined via intra-class and inter-class correlation coefficients, and narrowed down using the Least Absolute Shrinkage and Selection Operator (LASSO) regression model. The predictive performance of the radiomics-based model was assessed through receiver operating characteristic (ROC) analysis, employing machine learning classifiers such as k-Nearest Neighbors (KNN), Support Vector Machine (SVM), Logistic Regression (LR), and Random Forest (RF), trained and validated on datasets split 7:3, with a training set (n = 80) and a validation set (n = 35).

Results: The radiomics model exhibited robust predictive performance, with the RF classifier achieving superior precision and accuracy compared to LR, SVM, and KNN classifiers. Specifically, the RF classifier demonstrated a precision of 0.977 (training set) and 0.833 (validation set), as well as an accuracy of 0.925 (training set) and 0.857 (validation set), suggesting its superior performance in both metrics. Decision Curve Analysis (DCA) was utilized to evaluate the clinical efficacy of the RF classifier, demonstrating a favorable net benefit within the threshold ranges of 0.1 to 0.8 for the training set and 0.2 to 0.7 for the validation set.

Conclusions: The radiomics model developed in this study shows promise for early SCAP detection and can improve clinical decision-making.

背景:社区获得性肺炎(CAP)仍然是全球关注的重大健康问题,其中一部分病例会发展为严重社区获得性肺炎(SCAP)。本研究旨在开发并验证一种基于 CT 的放射组学模型,用于早期检测 SCAP,以便及时干预并改善患者预后:方法:本研究对 2021 年 1 月至 12 月期间南方医科大学顺德医院的 115 例 CAP 和 SCAP 患者进行了回顾性研究。使用 Pyradiomics 软件包,从 CT 扫描图像中提取 107 个放射组学特征,通过类内和类间相关系数进行细化,并使用最小绝对收缩和选择操作器(LASSO)回归模型缩小范围。通过接收器操作特征(ROC)分析评估了基于放射组学的模型的预测性能,采用的机器学习分类器包括k-近邻(KNN)、支持向量机(SVM)、逻辑回归(LR)和随机森林(RF),在数据集上进行了训练和验证,数据集的比例为7:3,训练集(n = 80)和验证集(n = 35):结果:放射组学模型表现出强劲的预测性能,与 LR、SVM 和 KNN 分类器相比,RF 分类器的精确度和准确度更高。具体来说,RF分类器的精确度为0.977(训练集)和0.833(验证集),准确度为0.925(训练集)和0.857(验证集),表明它在这两个指标上都表现出色。利用决策曲线分析(DCA)评估了射频分类器的临床疗效,结果表明,在训练集 0.1 至 0.8 和验证集 0.2 至 0.7 的阈值范围内,射频分类器都能带来良好的净效益:本研究开发的放射组学模型有望用于早期 SCAP 检测,并能改善临床决策。
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引用次数: 0
Enhanced skin cancer diagnosis using optimized CNN architecture and checkpoints for automated dermatological lesion classification. 利用优化的 CNN 架构和检查点增强皮肤癌诊断,实现皮肤病自动分类。
IF 2.9 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Pub Date : 2024-08-02 DOI: 10.1186/s12880-024-01356-8
M Mohamed Musthafa, Mahesh T R, Vinoth Kumar V, Suresh Guluwadi

Skin cancer stands as one of the foremost challenges in oncology, with its early detection being crucial for successful treatment outcomes. Traditional diagnostic methods depend on dermatologist expertise, creating a need for more reliable, automated tools. This study explores deep learning, particularly Convolutional Neural Networks (CNNs), to enhance the accuracy and efficiency of skin cancer diagnosis. Leveraging the HAM10000 dataset, a comprehensive collection of dermatoscopic images encompassing a diverse range of skin lesions, this study introduces a sophisticated CNN model tailored for the nuanced task of skin lesion classification. The model's architecture is intricately designed with multiple convolutional, pooling, and dense layers, aimed at capturing the complex visual features of skin lesions. To address the challenge of class imbalance within the dataset, an innovative data augmentation strategy is employed, ensuring a balanced representation of each lesion category during training. Furthermore, this study introduces a CNN model with optimized layer configuration and data augmentation, significantly boosting diagnostic precision in skin cancer detection. The model's learning process is optimized using the Adam optimizer, with parameters fine-tuned over 50 epochs and a batch size of 128 to enhance the model's ability to discern subtle patterns in the image data. A Model Checkpoint callback ensures the preservation of the best model iteration for future use. The proposed model demonstrates an accuracy of 97.78% with a notable precision of 97.9%, recall of 97.9%, and an F2 score of 97.8%, underscoring its potential as a robust tool in the early detection and classification of skin cancer, thereby supporting clinical decision-making and contributing to improved patient outcomes in dermatology.

皮肤癌是肿瘤学领域的首要挑战之一,其早期检测对治疗效果至关重要。传统的诊断方法依赖于皮肤科医生的专业知识,因此需要更可靠的自动化工具。本研究探索深度学习,尤其是卷积神经网络(CNN),以提高皮肤癌诊断的准确性和效率。HAM10000 数据集是一个全面的皮肤镜图像集合,涵盖了各种皮肤病变,本研究利用该数据集引入了一个复杂的 CNN 模型,该模型专为皮肤病变分类这一细致入微的任务量身定制。该模型的架构设计错综复杂,包含多个卷积层、池化层和密集层,旨在捕捉皮损的复杂视觉特征。为了应对数据集中类别不平衡的挑战,本研究采用了一种创新的数据增强策略,确保在训练过程中每个皮损类别都有均衡的表示。此外,本研究还引入了一种具有优化层配置和数据增强功能的 CNN 模型,大大提高了皮肤癌检测的诊断精度。该模型的学习过程使用 Adam 优化器进行了优化,参数经过 50 次历时微调,批量大小为 128,以增强模型辨别图像数据中微妙模式的能力。模型检查点回调确保了最佳模型迭代的保留,以备将来使用。所提出的模型准确率为 97.78%,精确度为 97.9%,召回率为 97.9%,F2 得分为 97.8%,突出了其作为皮肤癌早期检测和分类的强大工具的潜力,从而支持临床决策,并有助于改善皮肤科患者的治疗效果。
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BMC Medical Imaging
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