Joined December 2023
50 Photos and videos
ML in Health Science retweeted
🅔🅧🅞🅢🅚🅔🅛🅔🅣🅞🅝🅢 Medical and industrial human augmentation has become a reality, and the evidence base is growing at enormous speed. We mapped it in a review with more than 1,000 linked references, available both as a full read and as machine-readable JSON for AI/LLM workflows: doi.org/10.62487/saimsara376… #Exoskeletons #WearableRobotics #Rehabilitation #HumanAugmentation #OccupationalHealth #AssistiveTechnology #AIinMedicine #LLM #MachineReadable #EvidenceMapping #SAIMSARA
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ML in Health Science retweeted
Why are synthesized SAIMSARA papers not free? SAIMSARA papers are not copied PDFs or traditional articles stored somewhere on the internet. They are newly generated evidence syntheses created inside the SAIMSARA workflow. In its current architecture, SAIMSARA uses API access to several major LLM models, including Gemini, Grok, ChatGPT, Claude, and DeepSeek. Each synthesized paper, deep evidence synthesis, and Pro generation consumes paid tokens. That is why full synthesized papers cannot be offered for free: behind every result there are real computational costs. At the same time, the price of generation is far lower than the human labor required to collect the same evidence manually. Anyone who has ever searched scientific literature on a specific topic knows that even reference collection alone can take days, weeks, or sometimes months. When you purchase a SAIMSARA paper, you are buying back your time.
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ML in Health Science retweeted
🅒🅡🅨🅟🅣🅞 is not only finance — it is also a public health topic. In this short video, we discuss both sides from our SAIMSARA review: trading-related mental health risks, gambling-like behavior, mining pollution, and the potential of blockchain for healthcare data and governance. Watch here: youtu.be/NnpIhYJaXeQ #Cryptocurrency #PublicHealth #Blockchain #MentalHealth #Healthcare #SAIMSARA
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ML in Health Science retweeted
Remote robotic surgery is no longer science fiction. 🤖🏥 A new SAIMSARA video breaks down 3 key signals from a review of 207 original studies and >4,300 participants/sample observations. The evidence suggests that 5G telesurgery can be clinically feasible across distances >1,700 km — but only when latency, redundancy, cybersecurity, and haptic feedback are treated as clinical safety infrastructure. youtu.be/SG2vqAm1X8U #Telesurgery #5G #RoboticSurgery #MedTech #DigitalHealth #Surgery
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ML in Health Science retweeted
🅐🅘 🅒🅗🅐🅣🅑🅞🅣 🅐🅓🅓🅘🅒🅣🅘🅞🅝, attachment, and emotional dependency. Rare topic, high impact. ☸️SAIMSARA Digital found only 20 original studies with 6k participants — but the signal matters: loneliness, perceived empathy, parasocial bonds, and overreliance. Read the evidence map vote on AI trust: doi.org/10.62487/saimsarae9e… #SAIMSARA #DigitalHealth #AIChatbots #AIEthics #MentalHealth
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ML in Health Science retweeted
Can AI really act as a CEO? This short video highlights 3 evidence-based facts: AI can draft executive messages, support decisions, and simulate crisis responses — but trust, accountability, and legitimacy remain human problems. Watch here: youtu.be/K_WyKqeRBXU #AIasCEO #ArtificialIntelligence #ExecutiveLeadership #AIGovernance #CorporateGovernance #SAIMSARA
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ML in Health Science retweeted
ChatGPT vs Claude is the wrong question. In digital health, the real question is: which model, for which task, under which risk? One LLM may win in imaging. Another in education, coding, safety, or research workflows. The winner changes with modality, endpoint, version, and governance pressure. SAIMSARA turns the noise into an evidence map: 156 references · 519 original research papers Built for humans. Structured for machines. doi.org/10.62487/saimsarafe2… #DigitalHealth #AIinMedicine #ChatGPT #Claude #LLM #EvidenceMap #MachineReadableScience #SAIMSARA
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ML in Health Science retweeted
Digital health is not only about tracking physiology — it is also about how medical evidence travels. Our new SAIMSARA evidence map compares LinkedIn vs Twitter/X across healthcare, academia, business, government, and computational research: where each platform works, where it fails, and how evidence should be distributed to humans and machines. Read the synthesis or use the structured JSON feed for your LLM. doi.org/10.62487/saimsara645… #DigitalHealth #EvidenceSynthesis #MedicalAI #LinkedIn #Twitter #X #LLM #SAIMSARA
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ML in Health Science retweeted
#Grok after reading the SAIMSARA evidence JSON object:
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ML in Health Science retweeted
🅐🅘-🅖🅔🅝🅔🅡🅐🅣🅔🅓 🅥🅞🅘🅒🅔 is no longer just synthetic speech — it is becoming realistic enough for education, healthcare, accessibility, media, and commerce. But the same realism creates a safety gap: humans may detect synthetic voices poorly, while automated detectors can exceed 99% only in constrained settings. Our new SAIMSARA scoping review maps 226 original studies into a structured human- and machine-readable evidence map covering voice cloning, synthetic speech, deepfake detection, authentication, and provenance. doi.org/10.62487/saimsara363… #AIVoice #VoiceCloning #SyntheticSpeech #DeepfakeDetection #DigitalHealth #AIResearch #SAIMSARA
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ML in Health Science retweeted
Scientific papers were written for humans. But AI agents do not need another PDF. They need structured, citation-linked evidence they can immediately reason with. SAIMSARA turns scientific literature into machine-readable evidence objects — so your LLM, RAG system, or research agent can transform the evidence into the format you actually need. Not just a paper. 🅔🅥🅘🅓🅔🅝🅒🅔 as 🅙🅢🅞🅝 #AI #LLM #RAG #ScientificPublishing #MachineReadableEvidence #EvidenceAPI #DigitalHealth #MedicalAI #SAIMSARA
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ML in Health Science retweeted
Another feedback from @Google Gemini after receiving a SAIMSARA evidence snippet. The pattern is becoming clear: general AI answers are often reasonable — but SAIMSARA makes them more precise, clinical, and evidence-grounded. We give your LLM the evidence layer it actually needs. SAIMSARA — evidence your AI will appreciate. #SAIMSARA #GoogleGemini #AI #LLM #RAG #MedicalAI #EvidenceBasedMedicine
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ML in Health Science retweeted
What happens when Claude Sonnet 4.6 receives one SAIMSARA evidence block? Same model. Different evidence layer. Much deeper answer.
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ML in Health Science retweeted
We are launching the SAIMSARA 🅴🆅🅸🅳🅴🅽🅲🅴 API — built to give life-science and medical AI systems a stronger, faster, and more traceable evidence layer. For many workflows, the problem is no longer: “𝑊ℎ𝑖𝑐ℎ 𝑚𝑜𝑑𝑒𝑙 𝑖𝑠 𝑠𝑚𝑎𝑟𝑡𝑒𝑠𝑡?” The real question is: “𝑊ℎ𝑎𝑡 𝑒𝑣𝑖𝑑𝑒𝑛𝑐𝑒 𝑖𝑠 𝑡ℎ𝑒 𝑚𝑜𝑑𝑒𝑙 𝑎𝑙𝑙𝑜𝑤𝑒𝑑 𝑡𝑜 𝑡ℎ𝑖𝑛𝑘 𝑤𝑖𝑡ℎ?” The SAIMSARA database gives external AI/RAG systems access to large-scale scoping-review evidence objects: searchable, citable, fast to retrieve, and designed for integration into research, clinical-support, and educational AI workflows. Each evidence object is generated from large scientific literature retrieval sessions — often hundreds to thousands of source references — and human-reviewed. Limited API access is now available for subscribers, with business-level access planned for teams building serious scientific AI systems. Connect your LLM to structured evidence — and see what happens to its performance. saimsara.com/api/ #SAIMSARA #EvidenceAPI #RAG #GenerativeAI #MedicalAI #LifeSciences #ClinicalAI #ResearchAI #EvidenceBasedMedicine #ScientificAI #HealthTech #MedTech #ArtificialIntelligence
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ML in Health Science retweeted
SAIMSARA Chat now connects scientific reasoning with regulatory drug-label data. We have integrated the FDA Drug Label API into ☸️SAIMSARA Chat, allowing drug-related questions to be grounded not only in scientific literature, but also in structured regulatory label information — including dosage, indications, contraindications, warnings, interactions, and use instructions. To make this robust, we added RxNorm/RxNav normalization before FDA retrieval, so the system can better handle spelling variants and drug-name ambiguity before searching the label database. Why this matters: Scientific evidence tells us what has been studied. Regulatory labels tell us what is approved, warned, contraindicated, and officially described. For medical AI, both layers matter. SAIMSARA Chat now works closer to a real scientific-medical agent: literature evidence → SAIMSARA issue database regulatory drug labels → FDA API advanced reasoning → optional Deep Panel synthesis Important: FDA label information is regulatory context and does not replace professional medical advice. EU/EMA labeling may differ. Step by step, SAIMSARA is moving from static papers toward interactive scientific evidence ecosystems. #SAIMSARA #MedicalAI #FDA #DrugSafety #ClinicalAI #EvidenceBasedMedicine #ScientificAI #RxNorm #DigitalHealth
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ML in Health Science retweeted
When one medical AI becomes unavailable in Europe, the need does not disappear. It becomes clearer. Clinicians and researchers still need fast access to scientific evidence, transparent synthesis, and tools that help them think beyond a single static answer. That is why we built SAIMSARA. We operate across 200M scientific papers to help users synthesize their own evidence, generate AI-native scoping reviews, and explore where clinical science may be heading next. Not locked. Not limited. Evidence in motion. ☸️SAIMSARA — Machine Generated Science. Open evidence. Scientific direction. Clinical future. saimsara.com #SAIMSARA #MedicalAI #EvidenceBasedMedicine #AIinHealthcare #ClinicalResearch #ScientificResearch #DigitalHealth #FutureOfMedicine
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ML in Health Science retweeted
SAIMSARA has integrated World ID proof-of-human verification into its editorial workflow, now combining: 𝗠𝗮𝗰𝗵𝗶𝗻𝗲 𝗚𝗲𝗻𝗲𝗿𝗮𝘁𝗲𝗱 𝗦𝗰𝗶𝗲𝗻𝗰𝗲 𝗛𝘂𝗺𝗮𝗻 𝗩𝗲𝗿𝗶𝗳𝗶𝗲𝗱 𝗯𝘆 𝗪𝗼𝗿𝗹𝗱 𝗜𝗗 For us, @worldnetwork represents an important layer for the next stage of AI-native publishing: proof that behind machine-generated science, there is still a verified human responsible for editorial review, interpretation, and oversight. #SAIMSARA #WorldID #MachineGeneratedScience #WLD
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Journal prestige is a poor proxy for evidentiary integrity. High-impact publishing can still amplify duplicate datasets, abstract inflation, and the illusion of scientific weight. The future belongs to systems that audit evidence, not just labels. #SAIMSARA #MLHS #EvidenceMapping
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ML in Health Science retweeted
9% of men lose the Y chromosome. This isn’t “shrinking evolution.” It’s a systemic risk amplifier: • ↑ Myocardial infarction risk 68% • Esophageal cancer LOY prevalence 52.5% • Prostate cancer biomarker AUC 0.898 • Alzheimer’s: clonal hematopoiesis driver (OR 4.8) • COVID-19 lethality 54% Not niche genetics. This is men’s health biology. Built on 1,132 studies and 412,544 participants. #mlinhealthscience #sciencearray #MensHealth #Genomics #Cardiology #Oncology #Alzheimers #PrecisionMedicine #ChromosomeY doi.org/10.62487/saimsaraab1…
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