Evidence Receipt. Related Resources.
Evidence Receipt. Related Resources.
Compared to this week’s papers
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Canonical route: /signal-canvas/deephistovit-an-interpretable-vision-transformer-framework-for-histopathological-cancer-classification
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Agent Handoff
Canonical ID deephistovit-an-interpretable-vision-transformer-framework-for-histopathological-cancer-classification | Route /signal-canvas/deephistovit-an-interpretable-vision-transformer-framework-for-histopathological-cancer-classification
REST example
curl https://sciencetostartup.com/api/v1/agent-handoff/signal-canvas/deephistovit-an-interpretable-vision-transformer-framework-for-histopathological-cancer-classificationMCP example
{
"tool": "search_signal_canvas",
"arguments": {
"mode": "paper",
"paper_ref": "deephistovit-an-interpretable-vision-transformer-framework-for-histopathological-cancer-classification",
"query_text": "Summarize DeepHistoViT: An Interpretable Vision Transformer Framework for Histopathological Cancer Classification"
}
}source_context
{
"surface": "signal_canvas",
"mode": "paper",
"query": "DeepHistoViT: An Interpretable Vision Transformer Framework for Histopathological Cancer Classification",
"normalized_query": "2603.11403",
"route": "/signal-canvas/deephistovit-an-interpretable-vision-transformer-framework-for-histopathological-cancer-classification",
"paper_ref": "deephistovit-an-interpretable-vision-transformer-framework-for-histopathological-cancer-classification",
"topic_slug": null,
"benchmark_ref": null,
"dataset_ref": null
}Claims: 8
References: Pending verification
Proof: Verification pending
Freshness state: computing
Source paper: DeepHistoViT: An Interpretable Vision Transformer Framework for Histopathological Cancer Classification
PDF: https://arxiv.org/pdf/2603.11403v1
Source count: Pending verification
Coverage: 17%
Last proof check: 2026-04-02T02:30:40.136Z
Signal Canvas receipt window
/buildability/deephistovit-an-interpretable-vision-transformer-framework-for-histopathological-cancer-classification
Subject: DeepHistoViT: An Interpretable Vision Transformer Framework for Histopathological Cancer Classification
Verdict
Watch
Verdict is Watch because viability or proof quality is intermediate and should be re-evaluated before execution.
Preparing verified analysis
Dimensions overall score 8.0
No public code linked for this paper yet.
classification accuracy, precision, recall, F1-score, and ROC-AUC reaching 100 percent on the lung and colon cancer datasets
Explicitly stated in abstract with specific performance metrics
partial
classification accuracy, precision, recall, F1-score, and ROC-AUC reaching 100 percent on the lung and colon cancer datasets
Explicitly stated in abstract with specific performance metrics
partial
99.85 percent, 99.84 percent, 99.86 percent, 99.85 percent, and 99.99 percent respectively on the acute lymphoblastic leukaemia dataset
Explicitly stated in abstract with specific numeric values
partial
Experimental results demonstrate state-of-the-art performance across all datasets
Directly stated in abstract with supporting performance metrics
partial
The model employs a customized Vision Transformer architecture with an integrated attention mechanism
Directly stated in abstract describing the method
partial
designed to capture fine-grained cellular structures while improving interpretability through attention-based localization of diagnostically relevant regions
Directly stated in abstract but requires inference that this actually improves interpretability
partial
manual histopathological examination is time-consuming, labour-intensive, and subject to inter-observer variability
Directly stated in abstract as motivation for the work
partial
transformer-based architectures, have shown strong potential for modelling complex spatial dependencies in medical images
Directly stated in abstract but represents a general observation rather than a specific finding of this paper
partial
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Time to first demo
Insufficient data
No first-demo timestamp, owner estimate, or elapsed demo receipt is attached to this surface.
Structured compute envelope
Insufficient data
No data, compute, hardware, memory, latency, dependency, or serving requirement receipt is attached.
Receipt path
/buildability/deephistovit-an-interpretable-vision-transformer-framework-for-histopathological-cancer-classification
Paper ref
deephistovit-an-interpretable-vision-transformer-framework-for-histopathological-cancer-classification
arXiv id
2603.11403
Generated at
2026-04-02T02:30:40.136Z
Evidence freshness
stale
Last verification
2026-04-02T02:30:40.136Z
Sources
0
References
0
Coverage
17%
Lineage hash
66c9b887605b9da43278f89cb18280ab05b6695db6385c1fcb065ba80664441a
Canonical opportunity-kernel lineage hash.
External signature
unsigned_external
No founder, registry, pilot, or production-adoption signature is attached to this receipt.
Verification
not_verified
Verification is blocked until an external signature is provided.
Verification pending / evidence receipt incomplete
repo_url
references