2 research outputs found
Uncovering Quantitative Protein Interaction Networks for Mouse PDZ Domains Using Protein Microarrays
One of the principal challenges in systems biology is to uncover the networks of protein−protein
interactions that underlie most biological processes. To date, experimental efforts directed at this problem
have largely produced only qualitative networks that are replete with false positives and false negatives.
Here, we describe a domain-centered approach compatible with genome-wide investigations that
enables us to measure the equilibrium dissociation constant (KD) of recombinant PDZ domains for
fluorescently labeled peptides that represent physiologically relevant binding partners. Using a pilot set of
22 PDZ domains, 4 PDZ domain clusters, and 20 peptides, we define a gold standard dataset by determining
the KD for all 520 PDZ−peptide combinations using fluorescence polarization. We then show that microarrays
of PDZ domains identify interactions of moderate to high affinity (KD ≤ 10 μM) in a high-throughput format
with a false positive rate of 14% and a false negative rate of 14%. By combining the throughput of protein
microarrays with the fidelity of fluorescence polarization, our domain/peptide-based strategy yields a
quantitative network that faithfully recapitulates 85% of previously reported interactions and uncovers new
biophysical interactions, many of which occur between proteins that are co-expressed. From a broader
perspective, the selectivity data produced by this effort reveal a strong concordance between protein
sequence and protein function, supporting a model in which interaction networks evolve through small
steps that do not involve dramatic rewiring of the network
Uncovering Quantitative Protein Interaction Networks for Mouse PDZ Domains Using Protein Microarrays
One of the principal challenges in systems biology is to uncover the networks of protein−protein
interactions that underlie most biological processes. To date, experimental efforts directed at this problem
have largely produced only qualitative networks that are replete with false positives and false negatives.
Here, we describe a domain-centered approach compatible with genome-wide investigations that
enables us to measure the equilibrium dissociation constant (KD) of recombinant PDZ domains for
fluorescently labeled peptides that represent physiologically relevant binding partners. Using a pilot set of
22 PDZ domains, 4 PDZ domain clusters, and 20 peptides, we define a gold standard dataset by determining
the KD for all 520 PDZ−peptide combinations using fluorescence polarization. We then show that microarrays
of PDZ domains identify interactions of moderate to high affinity (KD ≤ 10 μM) in a high-throughput format
with a false positive rate of 14% and a false negative rate of 14%. By combining the throughput of protein
microarrays with the fidelity of fluorescence polarization, our domain/peptide-based strategy yields a
quantitative network that faithfully recapitulates 85% of previously reported interactions and uncovers new
biophysical interactions, many of which occur between proteins that are co-expressed. From a broader
perspective, the selectivity data produced by this effort reveal a strong concordance between protein
sequence and protein function, supporting a model in which interaction networks evolve through small
steps that do not involve dramatic rewiring of the network
