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A Decomposable Model for the Detection of Prostate Cancer in Multi-parametric MRI

机译:用于多参数MRI的前列腺癌检测的可分解模型

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Institutions that specialize in prostate MRI acquire different MR sequences owing to variability in scanning procedure and scanner hardware. We propose a novel prostate cancer detector that can operate in the absence of MR imaging sequences. Our novel prostate cancer detector first trains a forest of random ferns on all MR sequences and then decomposes these random ferns into a sum of MR sequence-specific random ferns enabling predictions to be made in the absence of one or more of these MR sequences. To accomplish this, we first show that a sum of random ferns can be exactly represented by another random fern and then we propose a method to approximately decompose an arbitrary random fern into a sum of random ferns. We show that our decomposed detector can maintain good performance when some MR sequences are omitted.
机译:由于扫描程序和扫描仪硬件的可变性,专门从事前列腺MRI的机构会获得不同的MR序列。我们提出了一种新型的前列腺癌检测器,该检测器可以在没有MR成像序列的情况下运行。我们新颖的前列腺癌检测器首先在所有MR序列上训练出随机蕨类植物的森林,然后将这些随机蕨类植物分解为MR序列特有的随机蕨类植物的总和,从而可以在不存在一个或多个这些MR序列的情况下做出预测。为此,我们首先显示随机蕨类植物的总和可以由另一个随机蕨类植物精确地表示,然后提出一种将任意随机蕨类植物近似分解为随机蕨类植物之和的方法。我们表明,当省略了一些MR序列时,分解后的检测器可以保持良好的性能。

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