There is a need to strengthen maize (Zea mays L.) breeding strategies based on multivariate selection to obtain high-yielding hybrids that are more stable and resilient to contrasting environmental conditions. Here, we show how the multi-trait stability index (MTSI) can be used to select maize hybrids for mean performance and stability of multiple traits. A set of 10 traits, including grain yield (GY), yield components, and plant-related traits with negative and positive desired selection gains (SGs), were accessed in 90 F 1 hybrids conducted in multi-environment trials. Hybrid and hybrid × location interaction effects were significant (p ≤ .001) for all analyzed traits. The MTSI provided positive gains for all the four traits that were wanted to increase (2.52% ≤ SG ≤ 4.86; mean, 3.28%), including GY (SG, 4.86%), and negative gains for all the six traits that were wanted to decrease (-20.28% ≤ SG ≤ -0.09%; mean, -6.70%), including tassel branch number (SG, -20.28%) and plant height (SG, -1.2%). We also observed desired gains for the stability of all traits. Direct and univariate selection for GY solely was not efficient to provide desired gains for all traits. The MTSI provides a unique, robust, and easy-to-handle selection process that allows identifying the strengths and weaknesses of hybrids. The index was found to be a powerful tool to develop better selection strategies, optimizing the use of resources and time, thus contributing to the sustainability of maize breeding programs worldwide.Abbreviations: DFL, distance from the flag leaf to the first branch of the tassel; DLN, distance for the last node to the first branch of the tassel; EH, ear height; GTB, genotype-by-trait biplot; GY, grain yield; KD, kernel depth; MET, multi-environment trial; MPE, mean performance and stability; MTSI, multi-trait stability index; NKE, number of kernels per ear; PH, plant height; SG, selection gains; TBN, tassel branch number; TKW, thousand-kernel weight; TL, tassel length; WAASB, weighted average of absolute scores from the singular value decomposition of the matrix of best linear unbiased predictions for the genotype × environment interaction effects generated by a linear mixed-effect model; WAASBY, superiority index that weights between mean performance and stability.