This study investigates the impact of missing observations on the predictive capability of central composite designs (CCDs) in experimental work. It finds that missing observations adversely affect design properties such as orthogonality and optimality, leading to decreased precision in parameter estimates. The authors analyze various designs and conclude that the largest loss in estimation precision occurs with missing factorial points.