As an important neuropathological hallmark of Alzheimer's disease (AD), the oligomerization of amyloid-β (Aβ) peptides has been intensively investigated in both theoretical and experimental studies. However, the oligomerization space in term of the kinetics, molecular mechanism and the oligomer structures remains mysterious to us. An equation which can quantitatively describe the time it takes for Aβ oligomers to appear in the human brain at a given Aβ monomer concentration is extremely vital for us to understand the development and disease progression of AD. In this study we utilized molecular dynamics (MD) simulations to investigate the oligomerization of Aβ42 peptides at five different monomer concentrations. We've elucidated the formation pathways of Aβ tetramers, characterized the oligomer structures, estimated the oligomerization time of Aβ dimers, trimers and tetramers, and for the first-time derived equations which could quantitatively describe the relationship between the oligomerization time and the monomer concentration. Applying these equations, our prediction of oligomerization time agrees well with the experimental and clinical findings, in spite of the limitations of our oligomerization simulations. We've found that the Aβ oligomerization time depends on the monomer concentration by a power of −2.4. The newly established equations will enable us to quantitatively estimate the risk score of AD, which is a function of age. Moreover, we have identified the most dominant pathway of forming Aβ tetramers, the probably most important and toxic Aβ oligomer. Our results have showed that the structures of Aβ42 dimer, trimer and tetramer, which are distinguishable from each other, depend on the monomer concentration at which the oligomers form. Representative oligomer structures which can serve as potential drug targets have been identified by clustering analysis. The MD sampling adequacy has been validated by the excellent agreement between the calculated and measured collisional cross section (CCS) parameters (the prediction errors are