Details

scope
mouse and macaque cortex, retrograde tracer interareal connectivity data
claim_text
Across mouse and macaque, weighted interareal cortical connectivity is highly predictable: medium- and strong-weight links can be predicted from network features with ~85-90% accuracy in mouse (70-80%
section_id
section_06
source_url
https://github.com/AllenNeuralDynamics/ComputationalReviewRecurrence/blob/79ce062d54a924ce05953ec90aa9d26044d2b48f/evidence/section_06_evidence_package.json
effect_size
binary link AUC ≥ 0.8 (macaque); medium/strong weighted link accuracy 85-90% (mouse), 70-80% (macaque)
review_repo
ComputationalReviewRecurrence
section_ref
wiki_page:computationalreviewrecurrence-06-connectomic-micons
source_kind
review_finding
source_path
evidence/section_06_evidence_package.json
source_span
[via section_06] Weighted medium and strong links are predictable with an 85%-90% accuracy (mouse) and 70%-80% (macaque), whereas weak links are not predictable in either species.
study_system
mouse and macaque cortex, retrograde tracer interareal connectivity data
section_title
6. Connectomic resolution — MICrONS mouse V1/HVA millimetre-scale EM volume; pyramidal-pyramidal wiring statistics derived from it; reconciliation with paired-recording estimates
evidence_summary
Machine-learning predictability framework applied to retrograde tract-tracing-derived weighted interareal cortical matrices in mouse and macaque.
review_bundle_ref
analysis_bundle:ab-d9c479db9be9
replication_status
replication_unknown
review_package_ref
analysis_bundle:ab-d9c479db9be9
source_artifact_ref
wiki_page:computationalreviewrecurrence-06-connectomic-micons
origin_url
https://github.com/AllenNeuralDynamics/ComputationalReviewRecurrence/blob/79ce062d54a924ce05953ec90aa9d26044d2b48f/evidence/section_06_evidence_package.json
commit_sha
79ce062d54a924ce05953ec90aa9d26044d2b48f
created_by
persona-jerome-lecoq-gbo-neuroscience
repository_url
https://github.com/AllenNeuralDynamics/ComputationalReviewRecurrence
Raw fields (4)
raw_fields
{
  "n": null,
  "doi": "10.1162/netn_a_00345",
  "claim": "Across mouse and macaque, weighted interareal cortical connectivity is highly predictable: medium- and strong-weight links can be predicted from network features with ~85-90% accuracy in mouse (70-80%",
  "cite_key": "Molnar2024",
  "evidence": "Machine-learning predictability framework applied to retrograde tract-tracing-derived weighted interareal cortical matrices in mouse and macaque.",
  "effect_size": "binary link AUC ≥ 0.8 (macaque); medium/strong weighted link accuracy 85-90% (mouse), 70-80% (macaque)",
  "text_access": "abstract_only",
  "study_system": "mouse and macaque cortex, retrograde tracer interareal connectivity data",
  "argument_role": "supporting",
  "original_section": "section_02",
  "replication_status": "replication_unknown",
  "claim_source_sentence": "[via section_06] Weighted medium and strong links are predictable with an 85%-90% accuracy (mouse) and 70%-80% (macaque), whereas weak links are not predictable in either species.",
  "conflict_context_borrow": true,
  "source_provenance_status": "non_substring_match",
  "replication_evidence_dois": [],
  "effect_size_source_sentence": "At the binary level, links are predictable with an area under the ROC curve of at least 0.8 for the macaque. Weighted medium and strong links are predictable with an 85%-90% accuracy (mouse) and 70%-80% (macaque), whereas weak links are not predictable in either species."
}
source_refs
[
  "paper:paper-d7dd6ae02de1"
]
evidence_refs
[
  {
    "ref": "paper:paper-d7dd6ae02de1"
  }
]
source_policy
{
  "mode": "public_source_pointer_with_short_context",
  "notes": [
    "Local review repositories are read-only inputs.",
    "SciDEX stores paper metadata, structured evidence, file pointers, and short citation contexts; it does not copy full review prose."
  ],
  "source_commit_sha": "79ce062d54a924ce05953ec90aa9d26044d2b48f",
  "source_repository_url": "https://github.com/AllenNeuralDynamics/ComputationalReviewRecurrence"
}

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