Radiographic Image Interpretation, Computer-Assisted

射线照相图像解释,计算机辅助
  • 文章类型: Journal Article
    背景:血管内动脉瘤修复术(EVAR)后的计算机断层扫描血管造影(CTA)图像的图像质量不令人满意,由于金属植入物造成的伪影阻碍了支架和隔离腔的清晰描绘,以及邻近的软组织。然而,由于更高的辐射剂量,目前减少这些伪影的技术仍需要进一步的进步,更长的处理时间等等。因此,这项研究的目的是评估利用单能量金属工件减少(SEMAR)以及一种新颖的深度学习图像重建技术的影响,被称为高级智能Clear-IQ引擎(AiCE),EVAR后CTA随访的图像质量。
    方法:这项回顾性研究包括47例患者(平均年龄±标准差:68.6±7.8岁;37例男性),他们在EVAR后接受了CTA检查。使用四种不同的方法重建图像:混合迭代重建(HIR),AICE,HIR和SEMAR的组合(HIR+SEMAR),以及AiCE和SEMAR的组合(AiCE+SEMAR)。两个放射科医生,对重建技术视而不见,独立评估图像。定量评估包括图像噪声的测量,信噪比(SNR),对比噪声比(CNR),工件的最长长度(AL),和工件索引(AI)。随后在不同的重建方法中比较这些参数。
    结果:主观结果表明,AiCE+SEMAR在图像质量方面表现最好。AiCE+SEMAR组的平均图像噪声强度(25.35±6.51HU)明显低于HIR组(47.77±8.76HU),AiCE(42.93±10.61HU),和HIR+SEMAR(30.34±4.87HU)组(p<0.001)。此外,AiCE+SEMAR展示了最高的SNR和CNR,以及最低的AIs和AL。重要的是,使用AiCE+SEMAR最清楚地观察到内漏和血栓。
    结论:与其他重建方法相比,AiCE+SEMAR的组合展示了卓越的图像质量,从而提高了潜在并发症的检测能力和诊断信心,例如EVAR后的早期小端漏和血栓。图像质量的这种改善可以导致更准确的诊断和更好的患者结果。
    BACKGROUND: The image quality of computed tomography angiography (CTA) images following endovascular aneurysm repair (EVAR) is not satisfactory, since artifacts resulting from metallic implants obstruct the clear depiction of stent and isolation lumens, and also adjacent soft tissues. However, current techniques to reduce these artifacts still need further advancements due to higher radiation doses, longer processing times and so on. Thus, the aim of this study is to assess the impact of utilizing Single-Energy Metal Artifact Reduction (SEMAR) alongside a novel deep learning image reconstruction technique, known as the Advanced Intelligent Clear-IQ Engine (AiCE), on image quality of CTA follow-ups conducted after EVAR.
    METHODS: This retrospective study included 47 patients (mean age ± standard deviation: 68.6 ± 7.8 years; 37 males) who underwent CTA examinations following EVAR. Images were reconstructed using four different methods: hybrid iterative reconstruction (HIR), AiCE, the combination of HIR and SEMAR (HIR + SEMAR), and the combination of AiCE and SEMAR (AiCE + SEMAR). Two radiologists, blinded to the reconstruction techniques, independently evaluated the images. Quantitative assessments included measurements of image noise, signal-to-noise ratio (SNR), contrast-to-noise ratio (CNR), the longest length of artifacts (AL), and artifact index (AI). These parameters were subsequently compared across different reconstruction methods.
    RESULTS: The subjective results indicated that AiCE + SEMAR performed the best in terms of image quality. The mean image noise intensity was significantly lower in the AiCE + SEMAR group (25.35 ± 6.51 HU) than in the HIR (47.77 ± 8.76 HU), AiCE (42.93 ± 10.61 HU), and HIR + SEMAR (30.34 ± 4.87 HU) groups (p < 0.001). Additionally, AiCE + SEMAR exhibited the highest SNRs and CNRs, as well as the lowest AIs and ALs. Importantly, endoleaks and thrombi were most clearly visualized using AiCE + SEMAR.
    CONCLUSIONS: In comparison to other reconstruction methods, the combination of AiCE + SEMAR demonstrates superior image quality, thereby enhancing the detection capabilities and diagnostic confidence of potential complications such as early minor endleaks and thrombi following EVAR. This improvement in image quality could lead to more accurate diagnoses and better patient outcomes.
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  • 文章类型: Journal Article
    背景:评估腹部双能CT(DECT)中通过深度学习图像重建(DLIR)实现的较薄切片碘图的图像质量和诊断接受度的改善。
    方法:本研究前瞻性纳入104名受试者,136个病灶。基于对比增强腹部DECT的门静脉扫描生成了四个系列的碘图:5毫米和1.25毫米,使用自适应统计迭代重建-V(Asir-V)和50%混合(AV-50),和1.25毫米使用DLIR与介质(DLIR-M),和高强度(DLIR-H)。测量了9个解剖部位的碘浓度(IC)及其标准偏差,并计算相应的变异系数(CV)。测量噪声功率谱(NPS)和边缘上升斜率(ERS)。五位放射科医生根据图像噪声对图像质量进行了评级,对比,清晰度,纹理,结构能见度小,并评估图像和病变显著性的总体诊断可接受性。
    结果:四次重建维持了9个解剖部位的IC值不变(所有p>0.999)。与1.25mmAV-50相比,1.25mmDLIR-M和DLIR-H显着降低了CV值(所有p<0.001),并呈现较低的噪声和噪声峰值(均p<0.001)。与5-mmAV-50相比,1.25-mm图像具有更高的ERS(所有p<0.001)。四个重建中的峰值和平均空间频率的差异相对较小,但具有统计学意义(均p<0.001)。1.25mmDLIR-M图像的诊断可接受性和病变显著性评价高于5mm和1.25mmAV-50图像(均P<0.001)。
    结论:DLIR可以促进腹部DECT中切片厚度较薄的碘图,以改善图像质量,诊断可接受性,和病变明显。
    BACKGROUND: To assess the improvement of image quality and diagnostic acceptance of thinner slice iodine maps enabled by deep learning image reconstruction (DLIR) in abdominal dual-energy CT (DECT).
    METHODS: This study prospectively included 104 participants with 136 lesions. Four series of iodine maps were generated based on portal-venous scans of contrast-enhanced abdominal DECT: 5-mm and 1.25-mm using adaptive statistical iterative reconstruction-V (Asir-V) with 50% blending (AV-50), and 1.25-mm using DLIR with medium (DLIR-M), and high strength (DLIR-H). The iodine concentrations (IC) and their standard deviations of nine anatomical sites were measured, and the corresponding coefficient of variations (CV) were calculated. Noise-power-spectrum (NPS) and edge-rise-slope (ERS) were measured. Five radiologists rated image quality in terms of image noise, contrast, sharpness, texture, and small structure visibility, and evaluated overall diagnostic acceptability of images and lesion conspicuity.
    RESULTS: The four reconstructions maintained the IC values unchanged in nine anatomical sites (all p > 0.999). Compared to 1.25-mm AV-50, 1.25-mm DLIR-M and DLIR-H significantly reduced CV values (all p < 0.001) and presented lower noise and noise peak (both p < 0.001). Compared to 5-mm AV-50, 1.25-mm images had higher ERS (all p < 0.001). The difference of the peak and average spatial frequency among the four reconstructions was relatively small but statistically significant (both p < 0.001). The 1.25-mm DLIR-M images were rated higher than the 5-mm and 1.25-mm AV-50 images for diagnostic acceptability and lesion conspicuity (all P < 0.001).
    CONCLUSIONS: DLIR may facilitate the thinner slice thickness iodine maps in abdominal DECT for improvement of image quality, diagnostic acceptability, and lesion conspicuity.
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  • 文章类型: Journal Article
    目的:评估不同量子迭代重建(QIR)水平对超高分辨率(UHR)冠状动脉CT血管造影(CCTA)图像客观和主观图像质量的影响,并确定强度水平对使用光子计数探测器(PCD)-CT进行狭窄量化的影响。
    方法:使用PCD-CT系统以每分钟60、80和100次的心率扫描包含两个钙化病变(25%和50%狭窄)的动态血管体模。对102例患者进行了体内CCTA检查。所有扫描均以UHR模式(切片厚度0.2mm)获取,并使用锋利的血管内核(Bv64)以四个不同的QIR水平(1-4)进行重建。图像噪声,信噪比(SNR),清晰度,并在体模中量化直径狭窄百分比(PDS),而噪音,SNR,对比噪声比(CNR),清晰度,和主观质量指标(噪声,清晰度,总体图像质量)在患者扫描中进行评估。
    结果:增加QIR水平导致客观图像噪声显着降低(体外和体内:均p<0.001),更高的信噪比(p<0.001)和CNR(p<0.001)。锐度和PDS值在QIR之间没有显著差异(所有成对p>0.008)。随着QIR水平的增加,体内图像的主观噪声显着降低,在增加的QIR水平下产生显著更高的图像质量评分(所有成对p<0.001)。定性清晰度,另一方面,不同水平的QIR没有差异(p=0.15)。
    结论:QIR算法可以增强CCTA数据集的图像质量,而不会影响图像清晰度或精确的狭窄测量,在最高强度水平上有最突出的好处。
    OBJECTIVE: To assess the impact of different quantum iterative reconstruction (QIR) levels on objective and subjective image quality of ultra-high resolution (UHR) coronary CT angiography (CCTA) images and to determine the effect of strength levels on stenosis quantification using photon-counting detector (PCD)-CT.
    METHODS: A dynamic vessel phantom containing two calcified lesions (25 % and 50 % stenosis) was scanned at heart rates of 60, 80 and 100 beats per minute with a PCD-CT system. In vivo CCTA examinations were performed in 102 patients. All scans were acquired in UHR mode (slice thickness0.2 mm) and reconstructed with four different QIR levels (1-4) using a sharp vascular kernel (Bv64). Image noise, signal-to-noise ratio (SNR), sharpness, and percent diameter stenosis (PDS) were quantified in the phantom, while noise, SNR, contrast-to-noise ratio (CNR), sharpness, and subjective quality metrics (noise, sharpness, overall image quality) were assessed in patient scans.
    RESULTS: Increasing QIR levels resulted in significantly lower objective image noise (in vitro and in vivo: both p < 0.001), higher SNR (both p < 0.001) and CNR (both p < 0.001). Sharpness and PDS values did not differ significantly among QIRs (all pairwise p > 0.008). Subjective noise of in vivo images significantly decreased with increasing QIR levels, resulting in significantly higher image quality scores at increasing QIR levels (all pairwise p < 0.001). Qualitative sharpness, on the other hand, did not differ across different levels of QIR (p = 0.15).
    CONCLUSIONS: The QIR algorithm may enhance the image quality of CCTA datasets without compromising image sharpness or accurate stenosis measurements, with the most prominent benefits at the highest strength level.
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  • 文章类型: Journal Article
    目的:评价X线X线X线影像分析在鉴别不同组织学类型乳腺癌中的应用价值,以预测乳腺癌的分级。为了识别激素受体,区分人类表皮生长因子受体2(HER2)并鉴定乳腺癌的管腔组织型。
    方法:从四个意大利中心招募了180个恶性病变和68个良性病变。然而,仅考虑恶性病变进行分析.所有患者均在颅尾(CC)和中侧斜(MLO)视图中进行了对比增强乳腺X线摄影。考虑到组织学发现是基本事实,考虑了四个结果:(1)G1G2与G3;(2)HER2+vs.HER2-;(3)HR+vs.HR-;和(4)非腔与腔A或HR+/HER2-和腔B或HR+/HER2+。对于多变量分析特征选择,考虑了平衡技术和模式识别方法。
    结果:单变量研究结果表明,每个结果的诊断性能都很低,而多变量分析的结果表明,可以获得更好的性能。在HER2+检测中,最佳性能(73%的准确率和AUC=0.77)使用线性回归模型(LRM)获得了通过MLO视图提取的12个特征.在HR+检测中,使用具有通过MLO视图提取的14个特征的LRM获得最佳性能(77%的准确度和AUC=0.80)。在分级分类中,通过用MLO视图提取的3个预测因子训练的决策树,在验证集上的准确率达到82%,从而获得最佳性能.在腔与非腔组织型分类中,最佳性能是通过用CC视图提取的15个预测因子训练的袋装树获得的,在验证集上达到94%的准确率。
    结论:结果表明,影像组学分析可以有效地用于设计一种工具,以支持医师在乳腺癌分类中的决策。特别是,腔组织型与非腔组织型的分类可以高精度地进行.
    OBJECTIVE: To evaluate the performance of radiomic analysis on contrast-enhanced mammography images to identify different histotypes of breast cancer mainly in order to predict grading, to identify hormone receptors, to discriminate human epidermal growth factor receptor 2 (HER2) and to identify luminal histotype of the breast cancer.
    METHODS: From four Italian centers were recruited 180 malignant lesions and 68 benign lesions. However, only the malignant lesions were considered for the analysis. All patients underwent contrast-enhanced mammography in cranium caudal (CC) and medium lateral oblique (MLO) view. Considering histological findings as the ground truth, four outcomes were considered: (1) G1 + G2 vs. G3; (2) HER2 + vs. HER2 - ; (3) HR + vs. HR - ; and (4) non-luminal vs. luminal A or HR + /HER2-  and luminal B or HR + /HER2 + . For multivariate analysis feature selection, balancing techniques and patter recognition approaches were considered.
    RESULTS: The univariate findings showed that the diagnostic performance is low for each outcome, while the results of the multivariate analysis showed that better performances can be obtained. In the HER2 + detection, the best performance (73% of accuracy and AUC = 0.77) was obtained using a linear regression model (LRM) with 12 features extracted by MLO view. In the HR + detection, the best performance (77% of accuracy and AUC = 0.80) was obtained using a LRM with 14 features extracted by MLO view. In grading classification, the best performance was obtained by a decision tree trained with three predictors extracted by MLO view reaching an accuracy of 82% on validation set. In the luminal versus non-luminal histotype classification, the best performance was obtained by a bagged tree trained with 15 predictors extracted by CC view reaching an accuracy of 94% on validation set.
    CONCLUSIONS: The results suggest that radiomics analysis can be effectively applied to design a tool to support physician decision making in breast cancer classification. In particular, the classification of luminal versus non-luminal histotypes can be performed with high accuracy.
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  • 文章类型: Journal Article
    目的:金属植入物引起的伪影在计算机断层扫描(CT)中仍然是一个挑战。我们使用不同的伪影减少方法研究了光子计数探测器计算机断层扫描(PCD-CT)对骨科植入物患者的伪影减少对图像质量和诊断置信度的影响。
    方法:在这项前瞻性研究中,连续接受骨科植入物的患者接受了植入物区域的PCD-CT成像.为每位患者重建四个系列(临床标准重建[PCD-CTStd],140keV的单能量图像[PCD-CT140keV],迭代金属伪影减少(iMAR)校正[PCD-CTiMAR],iMAR和140keV单能的组合[PCD-CT140keV+iMAR])。随后,三名放射科医生以随机和盲化的方式评估了重建的图像质量,神器严重性,解剖描绘(相邻和远处),和使用5点Likert量表(5=优秀)的诊断信心。此外,获得变异系数[CV]和相对定量的伪影减少潜力作为客观指标。
    结果:我们招募了39名患者,平均年龄为67.3±13.2岁(51%;n=20名男性),平均BMI为26.1±4kg/m2。iMAR的所有图像质量测量和诊断置信度均明显高于非iMAR重建(所有p<0.001)。没有观察到不同的伪影减少方法对CV的显著影响(p=0.26)。定量分析表明,iMAR重建最有效的伪影减少,其高于PCD-CT140keV(p<0.001)。
    结论:PCD-CT可以有效减少骨科植入物患者的金属伪影,带来卓越的图像质量和诊断信心,有可能改善患者管理和临床决策。
    OBJECTIVE: Artifacts caused by metallic implants remain a challenge in computed tomography (CT). We investigated the impact of photon-counting detector computed tomography (PCD-CT) for artifact reduction in patients with orthopedic implants with respect to image quality and diagnostic confidence using different artifact reduction approaches.
    METHODS: In this prospective study, consecutive patients with orthopedic implants underwent PCD-CT imaging of the implant area. Four series were reconstructed for each patient (clinical standard reconstruction [PCD-CTStd], monoenergetic images at 140 keV [PCD-CT140keV], iterative metal artifact reduction (iMAR) corrected [PCD-CTiMAR], combination of iMAR and 140 keV monoenergetic [PCD-CT140keV+iMAR]). Subsequently, three radiologists evaluated the reconstructions in a random and blinded manner for image quality, artifact severity, anatomy delineation (adjacent and distant), and diagnostic confidence using a 5-point Likert scale (5 = excellent). In addition, the coefficient of variation [CV] and the relative quantitative artifact reduction potential were obtained as objective measures.
    RESULTS: We enrolled 39 patients with a mean age of 67.3 ± 13.2 years (51%; n = 20 male) and a mean BMI of 26.1 ± 4 kg/m2. All image quality measures and diagnostic confidence were significantly higher for the iMAR vs. non-iMAR reconstructions (all p < 0.001). No significant effect of the different artifact reduction approaches on CV was observed (p = 0.26). The quantitative analysis indicated the most effective artifact reduction for the iMAR reconstructions, which was higher than PCD-CT140keV (p < 0.001).
    CONCLUSIONS: PCD-CT allows for effective metal artifact reduction in patients with orthopedic implants, resulting in superior image quality and diagnostic confidence with the potential to improve patient management and clinical decision making.
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  • 文章类型: Journal Article
    目的:在肺栓塞(PE)研究中,对低单能量图像(50KeV)与常规图像(120kVp)进行定性和定量评估,并确定这些差异的程度和临床相关性以及放射科医师的偏好。
    方法:回顾性评价在单源双能量CT上进行的150例PE检测CT检查。衰减,对比噪声比,在每次检查中,共获得8条肺动脉的信噪比,包括中央(450/1200=37.5%)和外周(750/1200=62.5%).比较了常规图像和低单能量图像的结果。对于质量评估,在常规和单能量模式下,将41张包含PE的图像并排呈现为成对的切片,并由9名放射科医生评估其是否易于检测栓子:心胸专家(3),非心胸专科医生(3),居民(3)。配对样本t检验,a-参数Wilcoxon检验,McNemar测试,进行了kappa统计。
    结果:单能量图像对每个测量的血管衰减具有2.09至2.26的总体统计学显著增加的平均比率(P<0.05),随着信噪比的增加(23.82±9.29vs.11.39±3.2)和对比噪声比(17.17±6.7vs7.27±2.52)(P<0.05)。此外,10/150(6%)的中央肺动脉测量在传统模式下被认为是次优的,在单能量图像上被认为是诊断性的(181±14.6vs.分别为387.7±72.4HU,P<0.05)。在主观评价中,非心胸放射科医生对低单能量图像表现出偏好,而心胸放射科医生没有(74.4%vs.57.7%,分别,P<0.05)。
    结论:单能量图像的SNR和CNR增加可能具有临床意义,特别是在次优PE研究的背景下。非心胸放射科医生和居民更喜欢低单能量图像。
    OBJECTIVE: To perform qualitative and quantitative evaluation of low-monoenergetic images (50 KeV) compared with conventional images (120 kVp) in pulmonary embolism (PE) studies and to determine the extent and clinical relevance of these differences as well as radiologists\' preferences.
    METHODS: One hundred fifty CT examinations for PE detection conducted on a single-source dual-energy CT were retrospectively evaluated. Attenuation, contrast-to-noise-ratio, and signal-to-noise-ratio were obtained in a total of 8 individual pulmonary arteries on each exam-including both central (450/1200=37.5%) and peripheral (750/1200=62.5%) locations. Results were compared between the conventional and low-monoenergetic images. For quality assessment, 41 images containing PE were presented side-by-side as pairs of slices in both conventional and monoenergetic modes and evaluated for ease in embolus detection by 9 radiologists: cardiothoracic specialists (3), noncardiothoracic specialists (3), and residents (3). Paired samples t tests, a-parametric Wilcoxon test, McNemar test, and kappa statistics were performed.
    RESULTS: Monoenergetic images had an overall statistically significant increased average ratio of 2.09 to 2.26 ( P <0.05) for each measured vessel attenuation, with an increase in signal-to-noise ratio (23.82±9.29 vs. 11.39±3.2) and contrast-to-noise ratio (17.17±6.7 vs 7.27±2.52) ( P <0.05). Moreover, 10/150 (6%) of central pulmonary artery measurements considered suboptimal on conventional mode were considered diagnostic on the monoenergetic images (181±14.6 vs. 387.7±72.4 HU respectively, P <0.05). In the subjective evaluation, noncardiothoracic radiologists showed a preference towards low-monoenergetic images, whereas cardiothoracic radiologists did not (74.4% vs. 57.7%, respectively, P <0.05).
    CONCLUSIONS: The SNR and CNR increase on monoenergetic images may have clinical significance particularly in the setting of sub-optimal PE studies. Noncardiothoracic radiologists and residents prefer low monoenergetic images.
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  • 文章类型: Journal Article
    背景:冠状动脉钙(CAC)扫描包含的有用信息超出了目前未报告的AgatstonCAC评分。我们最近报道了在CAC扫描中启用人工智能(AI)的心腔容积(AI-CAC™)预测了多种族动脉粥样硬化研究(MESA)中的房颤事件。在这项研究中,我们调查了AI-CAC心腔在预测心力衰竭(HF)中的表现.
    方法:我们将AI-CAC应用于无症状个体的5750个CAC扫描(52%为女性,白色40%,黑色26%,西班牙裔22%中国12%)在MESA基线检查(2000-2002)中没有已知的心血管疾病。我们使用了15年的结果数据,并比较了AI-CAC容量与NT-proBNP的时间依赖性曲线下面积(AUC)。Agatston得分,和9个已知的临床危险因素(年龄,性别,糖尿病,目前吸烟,高血压药物,收缩压和舒张压,LDL,HDL用于预测15年以上的HF事件。
    结果:经过15年的随访,产生256个高频事件。使用AI-CAC预测HF的15年时间依赖性AUC[95%CI]所有腔室容量(0.86[0.82,0.91])显着高于NT-proBNP(0.74[0.69,0.77])和Agatston评分(0.71[0.68,0.78])(p<0.0001)。与临床危险因素相当(0.85,p=0.4141)。无类别净重新分类指数(NRI)[95%CI]添加AI-CACLV对临床危险因素(0.32[0.16,0.41])有显著改善,NT-proBNP(0.46[0.33,0.58]),和Agatston评分(0.71[0.57,0.81])用于15年的HF预测(p<0.0001)。
    结论:AI-CAC容量显着优于NT-proBNP和AgatstonCAC评分,并显著提高了临床危险因素预测HF事件的AUC和无类别NRI。
    BACKGROUND: Coronary artery calcium (CAC) scans contain useful information beyond the Agatston CAC score that is not currently reported. We recently reported that artificial intelligence (AI)-enabled cardiac chambers volumetry in CAC scans (AI-CAC™) predicted incident atrial fibrillation in the Multi-Ethnic Study of Atherosclerosis (MESA). In this study, we investigated the performance of AI-CAC cardiac chambers for prediction of incident heart failure (HF).
    METHODS: We applied AI-CAC to 5750 CAC scans of asymptomatic individuals (52% female, White 40%, Black 26%, Hispanic 22% Chinese 12%) free of known cardiovascular disease at the MESA baseline examination (2000-2002). We used the 15-year outcomes data and compared the time-dependent area under the curve (AUC) of AI-CAC volumetry versus NT-proBNP, Agatston score, and 9 known clinical risk factors (age, gender, diabetes, current smoking, hypertension medication, systolic and diastolic blood pressure, LDL, HDL for predicting incident HF over 15 years.
    RESULTS: Over 15 years of follow-up, 256 HF events accrued. The time-dependent AUC [95% CI] at 15 years for predicting HF with AI-CAC all chambers volumetry (0.86 [0.82,0.91]) was significantly higher than NT-proBNP (0.74 [0.69, 0.77]) and Agatston score (0.71 [0.68, 0.78]) (p ​< ​0.0001), and comparable to clinical risk factors (0.85, p ​= ​0.4141). Category-free Net Reclassification Index (NRI) [95% CI] adding AI-CAC LV significantly improved on clinical risk factors (0.32 [0.16,0.41]), NT-proBNP (0.46 [0.33,0.58]), and Agatston score (0.71 [0.57,0.81]) for HF prediction at 15 years (p ​< ​0.0001).
    CONCLUSIONS: AI-CAC volumetry significantly outperformed NT-proBNP and the Agatston CAC score, and significantly improved the AUC and category-free NRI of clinical risk factors for incident HF prediction.
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  • 文章类型: Journal Article
    背景:冠状动脉钙(CAC)扫描包含CAC评分以外的可操作信息,目前尚未报告。
    方法:我们已经对5535名无症状个体(52.2%女性,45-84岁),先前在多种族动脉粥样硬化研究(MESA)的基线检查(2000-2002)中获得的CAC评分。AI-CAC平均每次CAC扫描花费21​s。我们使用了房颤(AF)的5年结局数据,并使用AI-CACLA体积的时间依赖性曲线下面积(AUC)与已知的AF预测因子进行了区分。CHARGE-AF风险评分和NT-proBNP。房颤事件的平均随访时间为2.9±1.4年。
    结果:在1、2、3、4和5年的随访中,发现了36、77、123、182和236例房颤,分别。AI-CACLA体积的AUC在1年、2年和3年显著高于CHARGE-AF(0.83vs.0.74,0.84vs.0.80和0.81vs.分别为0.78,所有p<0.05),但4年和5年相似,在1-5年显著高于NT-proBNP(所有p<0.01),但不是任何一年的联合CHARGE-AF和NT-proBNP。当添加到CHARGE-AF风险评分(0.60、0.28、0.32、0.19、0.24)时,AI-CACLA显着提高了1-5年房颤预测的连续净分类指数,和NT-proBNP(0.68,0.44,0.42,0.30,0.37)(均p<0.01)。
    结论:AI-CACLA体积能够早在一年内预测房颤,并显著改善CHARGE-AF风险评分和NT-proBNP的风险分类。
    BACKGROUND: Coronary artery calcium (CAC) scans contain actionable information beyond CAC scores that is not currently reported.
    METHODS: We have applied artificial intelligence-enabled automated cardiac chambers volumetry to CAC scans (AI-CACTM) to 5535 asymptomatic individuals (52.2% women, ages 45-84) that were previously obtained for CAC scoring in the baseline examination (2000-2002) of the Multi-Ethnic Study of Atherosclerosis (MESA). AI-CAC took on average 21 ​s per CAC scan. We used the 5-year outcomes data for incident atrial fibrillation (AF) and assessed discrimination using the time-dependent area under the curve (AUC) of AI-CAC LA volume with known predictors of AF, the CHARGE-AF Risk Score and NT-proBNP. The mean follow-up time to an AF event was 2.9 ​± ​1.4 years.
    RESULTS: At 1,2,3,4, and 5 years follow-up 36, 77, 123, 182, and 236 cases of AF were identified, respectively. The AUC for AI-CAC LA volume was significantly higher than CHARGE-AF for Years 1, 2, and 3 (0.83 vs. 0.74, 0.84 vs. 0.80, and 0.81 vs. 0.78, respectively, all p ​< ​0.05), but similar for Years 4 and 5, and significantly higher than NT-proBNP at Years 1-5 (all p ​< ​0.01), but not for combined CHARGE-AF and NT-proBNP at any year. AI-CAC LA significantly improved the continuous Net Reclassification Index for prediction of AF over years 1-5 when added to CHARGE-AF Risk Score (0.60, 0.28, 0.32, 0.19, 0.24), and NT-proBNP (0.68, 0.44, 0.42, 0.30, 0.37) (all p ​< ​0.01).
    CONCLUSIONS: AI-CAC LA volume enabled prediction of AF as early as one year and significantly improved on risk classification of CHARGE-AF Risk Score and NT-proBNP.
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  • 文章类型: Journal Article
    目的:获得大量的医学图像,深度学习发展所需的,在罕见的病理中可能具有挑战性。图像增强和预处理提供了可行的解决方案。这项工作探讨了坏死性小肠结肠炎(NEC)的情况下,一种罕见但危及生命的疾病,影响早产儿,具有挑战性的放射学诊断。我们研究了数据增强和预处理技术,并提出了两个优化的管道,用于在有限的NEC数据集上开发可靠的计算机辅助诊断模型。
    方法:我们提供了来自364名患者的1090例腹部X射线(AXR)的NEC数据集,并研究了几何增强的效果,基于ResNet-50骨干的NEC分类的配色方案增强及其组合。我们介绍了两个基于颜色对比度和边缘增强的管道,为了增加微妙的可见度,难以识别,在AXR上的关键NEC发现,并在具有挑战性的三类NEC分类任务中实现稳健的准确性。
    结果:我们的结果表明,几何增强可以提高性能,翻译实现+6.2%,而翻转和闭塞会降低性能。颜色增强,比如均衡,产量适度改善。拟议的Pr-1和Pr-2管道将模型精度提高了+2.4%和+1.7%,分别。将Pr-1/Pr-2与几何增强相结合,我们实现了7.1%的最大性能提升,实现稳健的NEC分类。
    结论:基于对预处理和增强技术的广泛验证,我们的工作展示了在有限数据集的AXR分类任务中图像预处理的先前未报告的潜力.我们的发现可以扩展到其他医学任务,以设计具有有限X射线数据集的可靠分类器模型。最终,我们还为AXR的自动NEC检测和分类提供了基准。
    OBJECTIVE: Obtaining large volumes of medical images, required for deep learning development, can be challenging in rare pathologies. Image augmentation and preprocessing offer viable solutions. This work explores the case of necrotising enterocolitis (NEC), a rare but life-threatening condition affecting premature neonates, with challenging radiological diagnosis. We investigate data augmentation and preprocessing techniques and propose two optimised pipelines for developing reliable computer-aided diagnosis models on a limited NEC dataset.
    METHODS: We present a NEC dataset of 1090 Abdominal X-rays (AXRs) from 364 patients and investigate the effect of geometric augmentations, colour scheme augmentations and their combination for NEC classification based on the ResNet-50 backbone. We introduce two pipelines based on colour contrast and edge enhancement, to increase the visibility of subtle, difficult-to-identify, critical NEC findings on AXRs and achieve robust accuracy in a challenging three-class NEC classification task.
    RESULTS: Our results show that geometric augmentations improve performance, with Translation achieving +6.2%, while Flipping and Occlusion decrease performance. Colour augmentations, like Equalisation, yield modest improvements. The proposed Pr-1 and Pr-2 pipelines enhance model accuracy by +2.4% and +1.7%, respectively. Combining Pr-1/Pr-2 with geometric augmentation, we achieve a maximum performance increase of 7.1%, achieving robust NEC classification.
    CONCLUSIONS: Based on an extensive validation of preprocessing and augmentation techniques, our work showcases the previously unreported potential of image preprocessing in AXR classification tasks with limited datasets. Our findings can be extended to other medical tasks for designing reliable classifier models with limited X-ray datasets. Ultimately, we also provide a benchmark for automated NEC detection and classification from AXRs.
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  • 文章类型: Journal Article
    目的:本研究的目的是评估采用深度学习方法在咬伤射线照片中自动识别和计数恒牙的有效性。本研究中采用的实验程序和技术在以下部分中描述。
    方法:使用CranioCatch标签程序注释了总共1248张咬痕射线照相图像,在Eskišehir中开发,土耳其。数据集被划分为3个子集:训练(n=1000,占总数的80%),验证(n=124,占总数的10%),和测试(n=124,占总数的10%)集。对图像进行3x3碰撞操作以增强标记区域的清晰度。
    结果:在测试数据集中使用Yolov5架构获得的人工智能模型的F1,灵敏度和精度结果分别为0.9913、0.9954和0.9873。
    结论:在基于深度学习的人工智能算法中对牙齿的数字识别应用于咬伤射线照片已经证明了显著的疗效。临床决策支持系统软件的利用,通过人工智能增强,有可能提高牙科医生的效率和效力。
    The aim of this study is to assess the efficacy of employing a deep learning methodology for the automated identification and enumeration of permanent teeth in bitewing radiographs. The experimental procedures and techniques employed in this study are described in the following section.
    A total of 1248 bitewing radiography images were annotated using the CranioCatch labeling program, developed in Eskişehir, Turkey. The dataset has been partitioned into 3 subsets: training (n = 1000, 80% of the total), validation (n = 124, 10% of the total), and test (n = 124, 10% of the total) sets. The images were subjected to a 3 × 3 clash operation in order to enhance the clarity of the labeled regions.
    The F1, sensitivity and precision results of the artificial intelligence model obtained using the Yolov5 architecture in the test dataset were found to be 0.9913, 0.9954, and 0.9873, respectively.
    The utilization of numerical identification for teeth within deep learning-based artificial intelligence algorithms applied to bitewing radiographs has demonstrated notable efficacy. The utilization of clinical decision support system software, which is augmented by artificial intelligence, has the potential to enhance the efficiency and effectiveness of dental practitioners.
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