This document summarizes a research paper that proposes a Non Linear Fuzzy Multiple Attractor Cellular Automata (NNFMACA) model for predicting heart attacks. The NNFMACA was trained on a database of 5000 patient records containing 13 input variables. It was tested on classifying patterns into distinct attractor basins representing disease classes. Experimental results showed interfaces for training and testing the NNFMACA, as well as accuracy metrics. The paper concludes that the NNFMACA model is effective for heart attack prediction based on analyzing significant patterns extracted from patient data.