The conventional aggregated performance measure (i.e., mean squared error) with respect to the whole dataset would not provide desired safety and quality assurance for each individual prediction made by a machine learning model in risk-sensitive regression problems. In this paper, we propose an informative indicator 7Z(x) x ) quantify model reliability for individual prediction (MRIP) for the purpose of safeguarding the usage of machine learning (ML) models in mission-critical applications. Specifically, we define the reliability of a ML model with respect to its prediction on each individual input x as the probability of the observed difference between the prediction of ML model and the actual observation falling within a small interval when the input x varies within small range subject to a preset distance constraint, namely 7Z(x) x ) = P (| y *- y * | <= epsilon | x * E B ( x ) ), where y * denotes the observed target value for the input x * , y * denotes the model prediction for the input x * , and x * is an input the neighborhood of x subject to the constraint B ( x ) = {x*| x * | x *- x <= delta }. The developed MRIP indicator 7Z(x) provides a direct, objective, quantitative, and general-purpose measure of "reliability" or the probability success of the ML model for each individual prediction by fully exploiting the local information associated with the input x and ML model. Next, to mitigate the intensive computational effort involved in MRIP estimation, we develop a two-stage ML-based framework to directly learn the relationship between x and its MRIP 7Z(x), x ), thus enabling to provide the reliability estimate 7Z(x) x ) for any unseen input instantly. Thirdly, we propose an information gain-based approach to help determine a threshold value pertaing to 7Z(x) x ) in support of decision makings on when to accept or abstain from counting on the ML model prediction. Comprehensive computational experiments and quantitative comparisons with existing methods on a broad range of real-world datasets reveal that the developed ML-based framework for MRIP estimation shows a robust performance in improving the reliability estimate of individual prediction, and the MRIP indicator 7Z(x) x ) thus provides an essential layer safety net when adopting ML models in risk-sensitive environments.