let ai_catalog_data = {
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        "title": "Robotics, Agents, and World Models to Target Cancer",
        "short_title": "Robotics, Agents, and World Models to Target Cancer",
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        "material_type": "webinar",
        "format": "video",
        "speaker_author": "Arvind Ramanathan",
        "organization": "NIH VideoCast",
        "host_series": "Data Science Seminar Series",
        "publication_date": "2026-02-18",
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        "language": "en",
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        "cancer_type": "",
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        "task_type": "prediction",
        "keywords": "machine_learning; prediction",
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        "tutorial_depth": "conceptual",
        "practical_hands_on": "no",
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        "slides_available": "no",
        "transcript_available": "yes",
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        "one_line_takeaway": "Robotics, Agents, and World Models to Target Cancer is a webinar on machine learning, worth keeping for later review or study.",
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        "actionability_score": 2,
        "overall_score": 4,
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        "status": "queued",
        "first_seen_date": "2026-04-14T20:37:10+00:00",
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        "broken_link": "no",
        "duplicate_group": "",
        "curator_confidence": "high",
        "notes": "promoted_from=IQ-411df1b6c146; raw_page_type=nih_videocast_event; query=cancer artificial intelligence; categories=; tags=; is_viewable=false; access_control=; platform="
    },
    "1": {
        "item_id": "IT-92c5e43d0f61",
        "title": "Theranostics Digital Twins: A Path to Personalized Medicine",
        "short_title": "Theranostics Digital Twins: A Path to Personalized Medicine",
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        "speaker_author": "Emilie Roncali",
        "organization": "NIH VideoCast",
        "host_series": "Data Science Seminar Series",
        "publication_date": "2026-01-14",
        "year": 2026,
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        "one_line_takeaway": "Theranostics Digital Twins: A Path to Personalized Medicine is a seminar on machine learning and clinical oncology, worth keeping for later review or study.",
        "relevance_score": 5,
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        "priority": "high",
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        "curator_confidence": "high",
        "notes": "promoted_from=IQ-c204a19c10a6; raw_page_type=nih_videocast_event; query=cancer artificial intelligence; categories=Special; tags=Data Science Seminar Series, DSSS; is_viewable=false; access_control=; platform="
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        "item_id": "IT-c46366400327",
        "title": "Artificial Intelligence, Multi-Modal Analysis, Digital Health, and Clinical Informatics (The Role of Pathology AI in Translational Cancer Research and Education)",
        "short_title": "Artificial Intelligence, Multi-Modal Analysis, Digital Health, and Clinical Inf\u2026",
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        "material_type": "seminar",
        "format": "video",
        "speaker_author": "Joel Saltz",
        "organization": "NIH VideoCast",
        "host_series": "Data Science Seminar Series",
        "publication_date": "2025-06-25",
        "year": 2025,
        "language": "en",
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        "cancer_type": "",
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        "transcript_available": "yes",
        "login_or_registration_required": "yes",
        "one_line_takeaway": "Artificial Intelligence, Multi-Modal Analysis, Digital Health, and Clinical Informatics (The Role of Pathology AI in Translational Cancer Research and Education) is a seminar on multimodal learning and pathology, worth keeping for later review or study.",
        "relevance_score": 5,
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        "last_checked": "2026-04-15T02:19:45+00:00",
        "broken_link": "no",
        "duplicate_group": "",
        "curator_confidence": "high",
        "notes": "promoted_from=IQ-543e627ef7db; raw_page_type=nih_videocast_event; query=cancer artificial intelligence; categories=Special; tags=Data Science Seminar Series, DSSS; is_viewable=false; access_control=; platform="
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        "item_id": "IT-561dfa22dfbe",
        "title": "Ctrl+Alt+Cure: Driving Smarter Cancer Care",
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        "speaker_author": "Douglas Flora",
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        "host_series": "Data Science Seminar Series",
        "publication_date": "2025-06-11",
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        "one_line_takeaway": "Ctrl+Alt+Cure: Driving Smarter Cancer Care is a seminar on machine learning and drug discovery, worth keeping for later review or study.",
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        "last_checked": "2026-04-15T02:19:45+00:00",
        "broken_link": "no",
        "duplicate_group": "",
        "curator_confidence": "high",
        "notes": "promoted_from=IQ-bfe1ce136b2a; raw_page_type=nih_videocast_event; query=cancer artificial intelligence; categories=Special; tags=Data Science Seminar Series, DSSS; is_viewable=true; access_control=world; platform=vbrick"
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    "4": {
        "item_id": "IT-dda05e3b6634",
        "title": "AI-Driven Spatial Transcriptomics Unlocks Large-Scale Breast Cancer Biomarker Discovery from Histopathology",
        "short_title": "AI-Driven Spatial Transcriptomics Unlocks Large-Scale Breast Cancer Biomarker D\u2026",
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        "material_type": "seminar",
        "format": "video",
        "speaker_author": "Eytan Ruppin",
        "organization": "NIH VideoCast",
        "host_series": "Data Science Seminar Series",
        "publication_date": "2025-05-07",
        "year": 2025,
        "language": "en",
        "cancer_area": "pathology",
        "cancer_type": "",
        "research_stage": "translational",
        "ai_method": "computer_vision",
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        "task_type": "biomarker_discovery",
        "keywords": "pathology; computer_vision; histopathology_images; biomarker_discovery",
        "audience_level": "intermediate",
        "tutorial_depth": "conceptual",
        "practical_hands_on": "no",
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        "login_or_registration_required": "yes",
        "one_line_takeaway": "AI-Driven Spatial Transcriptomics Unlocks Large-Scale Breast Cancer Biomarker Discovery from Histopathology is a seminar on computer vision and pathology, worth keeping for later review or study.",
        "relevance_score": 5,
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        "curator_confidence": "high",
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        "item_id": "IT-b5c3413687c9",
        "title": "AI in Cancer: Bridging Context from Design to Delivery",
        "short_title": "AI in Cancer: Bridging Context from Design to Delivery",
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        "material_type": "seminar",
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        "speaker_author": "Caroline Chung",
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        "host_series": "Data Science Seminar Series",
        "publication_date": "2025-04-02",
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        "one_line_takeaway": "AI in Cancer: Bridging Context from Design to Delivery is a seminar on machine learning and clinical oncology, worth keeping for later review or study.",
        "relevance_score": 5,
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        "first_seen_date": "2026-04-14T20:37:10+00:00",
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        "broken_link": "no",
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        "curator_confidence": "high",
        "notes": "promoted_from=IQ-2c3555dd37a5; raw_page_type=nih_videocast_event; query=cancer artificial intelligence; categories=Special; tags=Data Science Seminar Series, DSSS; is_viewable=true; access_control=world; platform=vbrick"
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    "6": {
        "item_id": "IT-ff9f429bc251",
        "title": "AI-Augmented Pathology: Enhancing Real-Time Cancer Diagnosis and Discovery",
        "short_title": "AI-Augmented Pathology: Enhancing Real-Time Cancer Diagnosis and Discovery",
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        "material_type": "seminar",
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        "speaker_author": "Kun-Hsing Kun Yu",
        "organization": "NIH VideoCast",
        "host_series": "Data Science Seminar Series",
        "publication_date": "2025-03-05",
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        "one_line_takeaway": "AI-Augmented Pathology: Enhancing Real-Time Cancer Diagnosis and Discovery is a seminar on machine learning and pathology, worth keeping for later review or study.",
        "relevance_score": 5,
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        "broken_link": "no",
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        "curator_confidence": "high",
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    "7": {
        "item_id": "IT-cf5df0a98825",
        "title": "Generative AI for Modeling Single-cell State and Response",
        "short_title": "Generative AI for Modeling Single-cell State and Response",
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        "speaker_author": "Fabian Theis",
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        "host_series": "Data Science Seminar Series",
        "publication_date": "2024-10-16",
        "year": 2024,
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        "cancer_area": "single_cell",
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        "one_line_takeaway": "Generative AI for Modeling Single-cell State and Response is a webinar on machine learning and single cell, worth keeping for later review or study.",
        "relevance_score": 5,
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        "curator_confidence": "high",
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    "8": {
        "item_id": "IT-477aa85fcf80",
        "title": "Machine Learning Dynamics in the Tumor Microenvironment",
        "short_title": "Machine Learning Dynamics in the Tumor Microenvironment",
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        "speaker_author": "Elham Azizi",
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        "host_series": "Data Science Seminar Series",
        "publication_date": "2024-05-22",
        "year": 2024,
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        "cancer_area": "general",
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        "one_line_takeaway": "Machine Learning Dynamics in the Tumor Microenvironment is a seminar on machine learning, worth keeping for later review or study.",
        "relevance_score": 5,
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    "9": {
        "item_id": "IT-d0e7d99cd090",
        "title": "Chapter 4: Big Data Science Technologies",
        "short_title": "Chapter 4: Big Data Science Technologies",
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        "publication_date": "2023-10-20",
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        "one_line_takeaway": "Chapter 4: Big Data Science Technologies is a course module on machine learning, worth keeping for later review or study.",
        "relevance_score": 5,
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        "item_id": "IT-c0a77b575d4c",
        "title": "Chapter 5: Machine Learning for Cancer Research",
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        "one_line_takeaway": "Chapter 5: Machine Learning for Cancer Research is a course module on machine learning, worth keeping for later review or study.",
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    "11": {
        "item_id": "IT-2a0d0ed98683",
        "title": "CCR Grand Rounds: Big Data Approaches to Study Intercellular Signaling During Tumor Immune Evasion",
        "short_title": "CCR Grand Rounds: Big Data Approaches to Study Intercellular Signaling During T\u2026",
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