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What are the most common types of lung tissue diseases detected using FPGA technology? 


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The most common types of lung tissue diseases detected using FPGA technology include Emphysema, Bronchitis, and Lung Cancer. Emphysema and Bronchitis are identified through the use of FPGA-based systems for lung disease detection, which improve accuracy in diagnosing smoking-related lung diseases . Additionally, FPGA technology is utilized in the detection of lung cancer through the implementation of a DRAM-Optimal Adder-CED system, enhancing edge detection performance and FPGA parameters such as Look-up-Table, slice, flip-flop, frequency, and power . FPGA-based systems play a crucial role in the early detection and classification of various lung diseases, offering improved accuracy and efficiency in the diagnosis process.

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