首页> 外文期刊>European radiology >Selection of diagnostic features on breast MRI to differentiate between malignant and benign lesions using computer-aided diagnosis: differences in lesions presenting as mass and non-mass-like enhancement.
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Selection of diagnostic features on breast MRI to differentiate between malignant and benign lesions using computer-aided diagnosis: differences in lesions presenting as mass and non-mass-like enhancement.

机译:使用计算机辅助诊断选择乳房MRI的诊断特征,以区分恶性和良性病变:病变表现为肿块和非肿块样增强。

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PURPOSE: To investigate methods developed for the characterisation of the morphology and enhancement kinetic features of both mass and non-mass lesions, and to determine their diagnostic performance to differentiate between malignant and benign lesions that present as mass versus non-mass types. METHODS: Quantitative analysis of morphological features and enhancement kinetic parameters of breast lesions were used to differentiate among four groups of lesions: 88 malignant (43 mass, 45 non-mass) and 28 benign (19 mass, 9 non-mass). The enhancement kinetics was measured and analysed to obtain transfer constant (K(trans)) and rate constant (k(ep)). For each mass eight shape/margin parameters and 10 enhancement texture features were obtained. For the lesions presenting as nonmass-like enhancement, only the texture parameters were obtained. An artificial neural network (ANN) was used to build the diagnostic model. RESULTS: For lesions presenting as mass, the four selected morphological features could reach an area under the ROC curve (AUC) of 0.87 in differentiating between malignant and benign lesions. The kinetic parameter (k(ep)) analysed from the hot spot of the tumour reached a comparable AUC of 0.88. The combined morphological and kinetic features improved the AUC to 0.93, with a sensitivity of 0.97 and a specificity of 0.80. For lesions presenting as non-mass-like enhancement, four texture features were selected by the ANN and achieved an AUC of 0.76. The kinetic parameter k(ep) from the hot spot only achieved an AUC of 0.59, with a low added diagnostic value. CONCLUSION: The results suggest that the quantitative diagnostic features can be used for developing automated breast CAD (computer-aided diagnosis) for mass lesions to achieve a high diagnostic performance, but more advanced algorithms are needed for diagnosis of lesions presenting as non-mass-like enhancement.
机译:目的:研究为表征肿块和非肿块病变的形态和增强动力学特征而开发的方法,并确定它们的诊断性能,以区分以肿块与非肿块类型呈现的恶性和良性病变。方法:定量分析乳腺病变的形态学特征和增强动力学参数,以区分四类病变:88例恶性肿瘤(43例,无质量45例)和28例良性病变(19例,无9例质量)。测量并分析增强动力学,以获得转移常数(K(反式))和速率常数(k(ep))。对于每个质量,获得了八个形状/边缘参数和10个增强纹理特征。对于表现为非肿块样增强的病变,仅获得纹理参数。人工神经网络(ANN)用于构建诊断模型。结果:对于表现为肿块的病变,在区分恶性病变与良性病变时,四个选定的形态学特征可达到ROC曲线(AUC)下方0.87的区域。从肿瘤热点分析的动力学参数(k(ep))达到了可比的AUC为0.88。结合的形态和动力学特征将AUC提高到0.93,灵敏度为0.97,特异性为0.80。对于表现为非肿块状增强的病变,ANN选择了四个纹理特征,AUC为0.76。来自热点的动力学参数k(ep)仅达到0.59的AUC,诊断值较低。结论:结果表明,定量诊断功能可用于开发针对大块病变的自动乳房CAD(计算机辅助诊断)以实现较高的诊断性能,但需要更高级的算法来诊断以非肿块为特征的病变喜欢增强。

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