Prostate cancer is the most dangerous cancer diagnosed in men worldwide. Prostate diagnosis has been affected by many factors, such as lesion complexity, observer visibility, and variability. Many techniques based on Magnetic Resonance Imaging (MRI) have been used for prostate cancer identification and classification in the last few decades. Developing these techniques is crucial and has a great medical effect because they improve the treatment benefits and the chance of patients' survival. A new technique that depends on MRI has been proposed to improve the diagnosis. This technique consists of two stages. First, the MRI images have been preprocessed to make the medical image more suitable for the detection step. Second, prostate cancer identification has been performed based on a pre-trained deep learning model, InceptionResNetV2, that has many advantages and achieves effective results. In this paper, the InceptionResNetV2 deep learning model used for this purpose has average accuracy equals to 89.20%, and the area under the curve (AUC) equals to 93.6%. The experimental results of this proposed new deep learning technique represent promising and effective results compared to other previous techniques.
翻译:前列腺癌是全世界男性诊断出的最危险的癌症。 前列腺诊断受到许多因素的影响,如损伤复杂性、观察者可见度和变异性等。许多基于磁共振成像(MRI)的技术在过去几十年中被用于前列腺癌的鉴定和分类。开发这些技术至关重要,具有巨大的医学影响,因为它们提高了治疗效益和患者存活的机会。提出了一种取决于MRI的新技术来改进诊断。这一技术分为两个阶段。首先,MRI图像已经预先处理,以使医疗图像更适合检测步骤。第二,前列腺癌症的识别是以预先训练的深层学习模型InceptionResNetV2为基础,该模型有许多优点并取得了有效结果。在本文中,用于此目的的InvitionResNetV2深层学习模型的平均精确度相当于89.20%,曲线下的区域(AUSC)相当于93.6%。与以前的其他技术相比,拟议的新的深层学习技术的实验结果是有希望和有效的结果。