| Literature DB >> 28405834 |
Mitsutaka Nemoto1, Naoto Hayashi2, Shouhei Hanaoka3, Yukihiro Nomura2, Soichiro Miki2, Takeharu Yoshikawa2.
Abstract
We propose a generalized framework for developing computer-aided detection (CADe) systems whose characteristics depend only on those of the training dataset. The purpose of this study is to show the feasibility of the framework. Two different CADe systems were experimentally developed by a prototype of the framework, but with different training datasets. The CADe systems include four components; preprocessing, candidate area extraction, candidate detection, and candidate classification. Four pretrained algorithms with dedicated optimization/setting methods corresponding to the respective components were prepared in advance. The pretrained algorithms were sequentially trained in the order of processing of the components. In this study, two different datasets, brain MRA with cerebral aneurysms and chest CT with lung nodules, were collected to develop two different types of CADe systems in the framework. The performances of the developed CADe systems were evaluated by threefold cross-validation. The CADe systems for detecting cerebral aneurysms in brain MRAs and for detecting lung nodules in chest CTs were successfully developed using the respective datasets. The framework was shown to be feasible by the successful development of the two different types of CADe systems. The feasibility of this framework shows promise for a new paradigm in the development of CADe systems: development of CADe systems without any lesion specific algorithm designing.Entities:
Keywords: Automatic optimization; CADe training dataset; Computer-aided detection (CADe) system; Generalized CADe framework; Machine learning method
Mesh:
Year: 2017 PMID: 28405834 PMCID: PMC5603442 DOI: 10.1007/s10278-017-9968-3
Source DB: PubMed Journal: J Digit Imaging ISSN: 0897-1889 Impact factor: 4.056