Terdik, GyörgyLantang, Oktavian Abraham2022-01-262022-01-262022http://hdl.handle.net/2437/328164Cancer is one of the non-contagious diseases that causes the most significant number of human deaths. The time it takes for cancer cells to be identified in a patient’s body significantly impacts how easily they can be treated. An automatic screening method using computer-aided diagnostic (CAD) is one way of early can- cer detection. This dissertation proposes several models that can be adopted as automatic screening methods. The first model is a convolutional-based single neural network built by adopting the Visual Geometry Group (VGG) module. The second model is an ensemble model based on a voting system built by combining three single networks from scratch by adopting three well-known mod- ules: VGG, Inception, and Residual Network modules. The last model is an ensemble model based on interconnected networks. Un- like the previous ensemble model, this model does not use a voting method in decision making but trains all three networks in an ex- tensive linked network to make a single final decision. Furthermore, the success of each model, also the benefits and drawbacks of it are presented.19enConvolutional Neural NetworkCancer DetectionPredicting Medical Images Using Convolutional Neural NetworkPredicting Medical Images Using Convolutional Neural NetworkInformatikai tudományokMűszaki tudományok