We propose an image synthesis mechanism for multi-sequence prostate MR images conditioned on text, to control lesion presence and sequence, as well as to generate paired bi-parametric images conditioned on images e.g. for generating diffusion-weighted MR from T2-weighted MR for paired data, which are two challenging tasks in pathological image synthesis. Our proposed mechanism utilises and builds upon the recent stable diffusion model by proposing image-based conditioning for paired data generation. We validate our method using 2D image slices from real suspected prostate cancer patients. The realism of the synthesised images is validated by means of a blind expert evaluation for identifying real versus fake images, where a radiologist with 4 years experience reading urological MR only achieves 59.4% accuracy across all tested sequences (where chance is 50%). For the first time, we evaluate the realism of the generated pathology by blind expert identification of the presence of suspected lesions, where we find that the clinician performs similarly for both real and synthesised images, with a 2.9 percentage point difference in lesion identification accuracy between real and synthesised images, demonstrating the potentials in radiological training purposes. Furthermore, we also show that a machine learning model, trained for lesion identification, shows better performance (76.2% vs 70.4%, statistically significant improvement) when trained with real data augmented by synthesised data as opposed to training with only real images, demonstrating usefulness for model training.
翻译:我们提出一个图像合成机制,用于以文本为条件的多序列前列腺MR图像,以控制损害的存在和顺序,并生成以图像为条件的双参数图像,例如,从T2-加权MR生成扩散加权MR,以生成由T2-加权MR制成的对配对数据,这是病理图像合成中两项具有挑战性的任务。我们提议的机制利用并借助最近稳定的传播模式,为配对数据生成提出基于图像的调节。我们用2D图像切片来验证我们的方法,这是真实的和综合的前列腺癌症患者的真实图像。合成图像的真实性通过盲目专家评估来验证,确定真实图像与假图像之间的真实性与假图像的对比性,在4年中,一个有4年经验读尿素MRMRM仅实现59.4%的精确度,在所有测试的序列中(机会为50 % )。 我们第一次通过盲目专家识别疑似腐蚀物的存在来评估所生成的病理学的真实性,我们发现临床师在真实性和合成的图像上都表现相似性,同时显示2.9个百分点的辨识辨别图像的准确性,同时显示真实性和合成图像的模型和综合性图像的准确性,显示真实性和综合性图像的精确性,在真实性图像之间,展示性图像中也展示了在70个经过性学学的改进中显示经过训练的改进的数据性数据上的潜力。</s>