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Talk at Microsoft Research, January 23 2013
Citation preview
Suppor&ng Scien&fic Sensemaking
Anita de Waard VP Research Data Collabora&ons, Elsevier
Visit Microso* Research, January 23, 2013
Outline
• A model of scien&fic sensemaking: – Stories, that persuade with data – Discourse segments and verb tense
• Towards extrac&ng claim-‐evidence networks: – Hedging in science – Crea&ng claim-‐evidence networks
• Data: – Why life is so complicated – Connec&ng biological experiments into collaboratories
Story Grammar The Story of Goldilocks and the Three Bears
Setting Time Once upon a time
Character a little girl named Goldilocks
Location She went for a walk in the forest. Pretty soon, she came upon a house.
Theme Goal She knocked and, when no one answered,
Attempt she walked right in.
Episode Name At the table in the kitchen, there were three bowls of porridge.
Subgoal Goldilocks was hungry.
Attempt She tasted the porridge from the first bowl.
Outcome This porridge is too hot! she exclaimed.
Attempt So, she tasted the porridge from the second bowl.
Outcome This porridge is too cold, she said
Attempt So, she tasted the last bowl of porridge.
Outcome Ahhh, this porridge is just right, she said happily and
Outcome she ate it all up.
Paper Grammar
The AXH Domain of Ataxin-1 Mediates Neurodegeneration through Its Interaction with Gfi-1/Senseless Proteins
Background The mechanisms mediating SCA1 pathogenesis are still not fully understood, but some general principles have emerged.
Objects of study
the Drosophila Atx-1 homolog (dAtx-1) which lacks a polyQ tract,
Experimental setup
studied and compared in vivo effects and interactions to those of the human protein
Research���goal
Gain insight into how Atx-1's function contributes to SCA1 pathogenesis. How these interactions might contribute to the disease process and how they might cause toxicity in only a subset of neurons in SCA1 is not fully understood.
Hypothesis Atx-1 may play a role in the regulation of gene expression
Name dAtX-1 and hAtx-1 Induce Similar Phenotypes When Overexpressed in Files
Subgoal test the function of the AXH domain
Method overexpressed dAtx-1 in flies using the GAL4/UAS system (Brand and Perrimon, 1993) and compared its effects to those of hAtx-1.
Results Overexpression of dAtx-1 by Rhodopsin1(Rh1)-GAL4, which drives expression in the differentiated R1-R6 photoreceptor cells (Mollereau et al., 2000 and O'Tousa et al., 1985), results in neurodegeneration in the eye, as does overexpression of hAtx-1[82Q]. Although at 2 days after eclosion, overexpression of either Atx-1 does not show obvious morphological changes in the photoreceptor cells
Data (data not shown),
Results both genotypes show many large holes and loss of cell integrity at 28 days
Data (Figures 1B-1D).
Results Overexpression of dAtx-1 using the GMR-GAL4 driver also induces eye abnormalities. The external structures of the eyes that overexpress dAtx-1 show disorganized ommatidia and loss of interommatidial bristles
Data (Figure 1F),
A paper is a story…
Aristotle Quin-lian Scien-fic Paper
prooimion Introduc&on/ exordium
The introduc&on of a speech, where one announces the subject and purpose of the discourse, and where one usually employs the persuasive appeal to ethos in order to establish credibility with the audience.
Introduc&on: posi&oning
prothesis Statement of
Facts/narra<o
The speaker here provides a narra&ve account of what has happened and generally explains the nature of the case.
Introduc&on: research ques&on
Summary/ propos<<o
The proposi&o provides a brief summary of what one is about to speak on, or concisely puts forth the charges or accusa&on. Summary of contents
pis&s Proof/ confirma<o
The main body of the speech where one offers logical arguments as proof. The appeal to logos is emphasized here. Results
Refuta&on/ refuta<o
As the name connotes, this sec&on of a speech was devoted to answering the counterarguments of one's opponent. Related Work
epilogos perora<o Following the refuta&o and concluding the classical ora&on, the perora&o conven&onally employed appeals through pathos, and oUen included a summing up.
Discussion: summary, implica&ons.
…that persuades…
Goal of the paper is to be published; it uses author/journal as a host Format has co-‐evolved: predator-‐prey rela&onship with reviewers
5
... with data.
In defense of the clause as the unit of thought:
1. Importantly, our results so far indicate that the expression of miR-‐372&3 did not reduce the ac&vity of RASV12, as these cells were s&ll growing faster than normal cells and were tumorigenic, for which RAS ac&vity is indispensable (Hahn et al, 1999 and Kolfschoten et al, 2005).
2. To shed more light on this aspect, we examined the effect of miR-‐372&3 expression on p53 ac&va&on in response to oncogenic s&mula&on.
3. We used for this experiment BJ/ET cells containing p14ARFkd because, following RASV12 treatment, in those cells p53 is s&ll ac&vated but more clearly stabilized than in parental BJ/ET cells (Voorhoeve and Agami, 2003), resul&ng in a sensi&zed system for slight altera&ons in p53 in response to RASV12.
4. Figure 4A shows that following RASV12 s&mula&on, p53 was stabilized and ac&vated, and its target gene, p21cip1, was induced in all cases, indica&ng an intact p53 pathway in these cells.
• More than one ‘thought unit’ per sentence. • Verb tense changes within sentence (several &mes). • Airibu&on, ac&ons/states, and preposi&ons all contained within a sentence.
1. Importantly, our results so far indicate that the expression of miR-‐372&3 did not reduce the ac&vity of RASV12, as these cells were s&ll growing faster than normal cells and were tumorigenic, for which RAS ac&vity is indispensable (Hahn et al, 1999 and Kolfschoten et al, 2005).
2. To shed more light on this aspect, we examined the effect of miR-‐372&3 expression on p53 ac&va&on in response to oncogenic s&mula&on.
3. We used for this experiment BJ/ET cells containing p14ARFkd because, following RASV12 treatment, in those cells p53 is s&ll ac&vated but more clearly stabilized than in parental BJ/ET cells (Voorhoeve and Agami, 2003), resul&ng in a sensi&zed system for slight altera&ons in p53 in response to RASV12.
4. Figure 4A shows that following RASV12 s&mula&on, p53 was stabilized and ac&vated, and its target gene, p21cip1, was induced in all cases, indica&ng an intact p53 pathway in these cells.
Head: premise, mo&va&on, airibu&on (matrix clause)
Middle: main biological statement
End: interpreta&on, elabora&on, airibu&on (reference)
In defense of the clause as the unit of thought:
1. Importantly, our results so far indicate that the expression of miR-‐372&3 did not reduce the ac&vity of RASV12, as these cells were s&ll growing faster than normal cells and were tumorigenic, for which RAS ac&vity is indispensable (Hahn et al, 1999 and Kolfschoten et al, 2005).
2. To shed more light on this aspect, we examined the effect of miR-‐372&3 expression on p53 ac&va&on in response to oncogenic s&mula&on.
3. We used for this experiment BJ/ET cells containing p14ARFkd because, following RASV12 treatment, in those cells p53 is s&ll ac&vated but more clearly stabilized than in parental BJ/ET cells (Voorhoeve and Agami, 2003), resul&ng in a sensi&zed system for slight altera&ons in p53 in response to RASV12.
4. Figure 4A shows that following RASV12 s&mula&on, p53 was stabilized and ac&vated, and its target gene, p21cip1, was induced in all cases, indica&ng an intact p53 pathway in these cells.
Regulatory clause
Fact Goal Method Result Implica&on
In defense of the clause as the unit of thought:
Both seminomas and the EC component of nonseminomas share features with ES cells. To exclude that the detection of miR-371-3 merely reflects its expression pattern in ES cells, we tested by RPA miR-302a-d, another ES cells-specific miRNA cluster (Suh et al, 2004). In many of the m i R - 3 7 1 - 3 e x p r e s s i n g s e m i n o m a s a n d nonseminomas, miR-302a-d was undetectable (Figs S7 and S8), suggesting that miR-371-3 expression is a selective event during tumorigenesis.
Both seminomas and the EC component of nonseminomas share features with ES cells. To exclude that the detection of miR-371-3 merely reflects its expression pattern in ES cells, we tested by RPA miR-302a-d, another ES cells-specific miRNA cluster (Suh et al, 2004). In many of the miR-371-3 expressing seminomas and nonseminomas, miR-302a-d was undetectable (Figs S7 and S8), suggesting that miR-371-3 expression is a selective event during tumorigenesis.
Fact
Hypothesis
Method
Result
Implica&on
Goal
Reg-‐Implica&on
Conceptual knowledge
Experimental Evidence
Clause, realm and tense:
Concepts, models, ‘facts’: Present tense
Experiment: Past tense
Transi&ons: present tense
(1) Both seminomas and the EC component of nonseminomas share features with ES cells.
(2) b. the detection of miR-371-3 merely reflects its expression pattern in ES cells,
Fact Problem
(3) c. miR-371-3 expression is a selective event during tumorigenesis.
Implica&on
(2) a. To exclude that
Goal
(3) b. suggesting that
Regulatory-‐Implica&on
(2) c. we tested by RPA miR-302a-d, another ES cells-specific miRNA cluster (Suh et al, 2004).
(3) a. In many of the miR-371-3 expressing seminomas and nonseminomas, miR-302a-d was undetectable (Figs S7 and S8),
Method Result
Clause, realm and tense:
Facts in the eternal present
Endogenous small RNAs (miRNAs) regulate gene expression by mechanisms conserved across metazoans.
Events in the simple past
Vehicle-‐treated animals spent equivalent &me inves&ga&ng a juvenile in the first and second sessions in experiments conducted in the NAC and the striatum: T1 values were 122 ± 6 s and 114 ± 5 s.
Events with embedded facts
We also generated BJ/ET cells expressing the RASV12-‐ERTAM chimera gene, which is only ac&ve when tamoxifen is added (De Vita et al, 2005).
A>ribu-on in the present perfect
miRNAs have emerged as important regulators of development and control processes such as cell fate determina&on and cell death (Abrahante et al., 2003, Brennecke et al., 2003, Chang et al., 2004, Chen et al., 2004, Johnston and Hobert, 2003, Lee et al., 1993]
Implica-ons are hedged, and in the present tense
These results indicate that although miR-‐372&3 confer complete protec&on to oncogene-‐induced senescence in a manner similar to p53 inac&va&on, the cellular response to DNA damage remains intact
Tense use in science and mythology: I sing of golden-‐throned Hera whom Rhea bare. Queen of the immortals is she, surpassing all in beauty: she is the sister and the wife of loud-‐thundering Zeus, -‐-‐the glorious one whom all the blessed throughout high Olympus reverence and honor.
Now the wooers turned to the dance and to gladsome song, and made them merry, and waited &ll evening should come; and as they made merry dark evening came upon them.
And she took her mighty spear, &pped with sharp bronze, heavy and huge and strong, wherewith she vanquishes the ranks of men-‐of warriors, with whom she is wroth, she, the daughter of the mighty sire.
In this book I have had old stories wriien down, as I have heard them told by intelligent people, concerning chiefs who have held dominion in the northern countries, and who spoke the Danish tongue; and also concerning some of their family branches, according to what has been told me.
Now it is said that ever since then whenever the camel sees a place where ashes have been scaiered, he wants to get revenge with his enemy the rat and stomps and rolls in the ashes hoping to get the rat
From fic&on to fact: Hedging
• Voorhoeve et al., 2006: “These miRNAs neutralize p53-‐ mediated CDK inhibi&on, possibly through direct inhibi&on of the expression of the tumor suppressor LATS2.”
• Kloosterman and Plasterk, 2006: “In a gene&c screen, miR-‐372 and miR-‐373 were found to allow prolifera&on of primary human cells that express oncogenic RAS and ac&ve p53, possibly by inhibi&ng the tumor suppressor LATS2 (Voorhoeve et al., 2006).”
• Yabuta et al., 2007: “[On the other hand,] two miRNAs, miRNA-‐372 and-‐373, func&on as poten-al novel oncogenes in tes&cular germ cell tumors by inhibi&on of LATS2 expression, which suggests that Lats2 is an important tumor suppressor (Voorhoeve et al., 2006).”
• Okada et al., 2011: “Two oncogenic miRNAs, miR-‐372 and miR-‐373, directly inhibit the expression of Lats2, thereby allowing tumorigenic growth in the presence of p53 (Voorhoeve et al., 2006).”
“[Y]ou can transform .. fic&on into fact just by adding or subtrac&ng references”, Bruno Latour [1]
Hedging in science: • Why do authors hedge?
– Make a claim ‘pending […] acceptance in the community’ [2] – ‘Create A Research Space’ – hedging allows authors to insert themselves into
the discourse in a community [3] – ‘the strongest claim a careful researcher can make’ [4]
• Hedging cues, specula&ve language, modality/nega&on: – Light et al [5]: finding specula&ve language – Wilbur et al [6]: focus, polarity, certainty, evidence, and direc&onality – Thompson et al [7]: level of specula&on, type/source of the evidence and
level of certainty
• Sen&ment detec&on (e.g. Kim and Hovy [8] a.m.o.): – Holder of the opinion, strength, polarity as ‘mathema&cal func&on’ ac&ng on
main proposi&onal content – Wide applica&ons in product reviews; but not (yet) in science!
A model for epistemic evalua&ons:
For a Proposi&on P, an epistemically marked clause E is an evalua&on of P, where EV, B, S(P), with:
– V = Value: 3 = Assumed true, 2 = Probable, 1 = Possible, 0 = Unknown, (-‐ 1= possibly untrue, -‐ 2 = probably untrue, -‐3 = assumed untrue)
– B = Basis: Reasoning Data
– S = Source: A = speaker is author A, explicit IA = speaker author, A, implicit N = other author N, explicit NN = other author NN, implicit Model suggested by Eduard Hovy,
Informa<on Sciences Ins<tute University South Califormia
Repor&ng verbs vs. epistemic value: Value = 0 (unknown)
establish, (remain to be) elucidated, be (clear/useful), (remain to be) examined/determined, describe, make difficult to infer, report
Value = 1 (hypothe&cal)
be important, consider, expect, hypothesize (5x), give insight, raise possibility that, suspect, think
Value = 2 (probable)
appear, believe, implicate (2x), imply, indicate (12x), play a role, represent, suggest (18x), validate (2x),
Value = 3 (presumed true)
be able/apparent/important /posi&ve/visible, compare (2x), confirm (2x), define, demonstrate (15x), detect (5x), discover, display (3x), eliminate, find (3x), iden&fy (4x), know, need, note (2x), observe (2x), obtain (success/results-‐ 3x), prove to be, refer, report(2x), reveal (3x), see(2x), show(24x), study, view
Most prevalent clause type: “These results suggest that...”
Adverb/Connec&ve thus, therefore, together, recently, in summary
Determiner/Pronoun it, this, these, we/our
Adjec&ve previous, future, beYer
Noun phrase data, report, study, result(s); method or reference
Modal form of ‘to be’, may, remain
Adjec&ve o*en, recently, generally
Verb show, obtain, consider, view, reveal, suggest, hypothesize, indicate, believe
Preposi&on that, to
Ontology for Reasoning, Certainty and Airibu&on [11] vocab.deri.ie/orca
Adding metadiscourse to triples: Biological statement with BEL/ epistemic markup
BEL representa-on: Epistemic evalua-on
These miRNAs neutralize p53-‐mediated CDK inhibi<on, possibly through direct inhibi<on of the expression of the tumor-‐suppressor LATS2.
r(MIR:miR-‐372) -‐|(tscript(p(HUGO:Trp53)) -‐| kin(p(PFH:”CDK Family”))) Increased abundance of miR-‐372 decreases abundance of LATS2 r(MIR:miR-‐372) -‐| r(HUGO:LATS2)
Value = Possible Source = Unknown Basis = Unknown
Biological statement with Medscan/epistemic markup
MedScan Analysis: Epistemic evalua-on
Furthermore, we present evidence that the secre<on of nesfaTn-‐1 into the culture media was drama&cally increased during the differen&a&on of 3T3-‐L1 preadipocytes into adipocytes (P < 0.001) and aUer treatments with TNF-‐alpha, IL-‐6, insulin, and dexamethasone (P < 0.01).
IL-‐6 è NUCB2 (nesfa<n-‐1) Rela&on: MolTransport Effect: Posi&ve CellType: Adipocytes Cell Line: 3T3-‐L1
Value = Probable Source = Author Basis = Data
Claim-‐Evidence example: Data2Seman<cs Goal: improve speed of integra&on of research > prac&ce
A. Philips’ Electronic Patient Records B. Elsevier-‐published Clinical Guideline
C. Elsevier (or other publisher’s) Research Report or Data
Step 1: Patient data + diagnosis link to Guideline recommendation
Step 2: Guideline recommendation links to evidence in report or data
Claim-‐Evidence Chains in Drug-‐drug interac&ons
20
Step 1: Manually iden&fy DDIs and drug names in wide collec&on of content sources Step 2: Develop a model of Drug-‐Drug
Interac&on and define candidates
Step 3: Automate this process and store as Linked Data
Claimed Knowledge Updates Defini&on: 1) A CKU expresses a proposi&on about biological en&&es 2) A CKU is a new proposi&on 3) The authors present the CKU as factual: => Strength = Certainty 4) A CKU is derived from experimental work described in the ar&cle: => Basis = Data 5) The ownership is aiributed
to the author(s) of the ar&cle. ⇒ Source = Author, Explicit
Sandor/de Waard, [13]
A corpus for cita&on analysis:
Work done with Lucy Vanderwende
Type Voorhoeve text CiTng text
Method We subsequently created a human miRNA expression library (miR-‐Lib) by cloning almost all annotated human miRNAs into our vector (Rfam release 6) (Figure S3)
Voorhoeve et al. (116) employed a novel strategy by combining an miRNA vector library and corresponding bar code array Using a novel retroviral miRNA expression library,
Agami and co-‐workers performed a cell-‐based screen
Result we iden&fied miR-‐372 and miR-‐373, each permi|ng prolifera&on and tumorigenesis of primary human cells that harbor both oncogenic RAS and ac&ve wild -‐ type p53.
miR-‐372 and miR-‐373 were consequently found to permit prolifera&on and tumorigenesis of these primary cells carrying both oncogenic RAS and wild-‐type p53,
Voorhoeve et al. (2006) iden&fied miR-‐372 and miR-‐373 miR-‐372 has been recently described as poten&al oncogene
that collaborate with oncogenic RAS in cellular transforma&on
Interpreta<on These miRNAs neutralize p53-‐ mediated CDK inhibi&on, possibly through direct inhibi&on of the expression of the tumor suppressor LATS2 .
probably through direct inhibi&on of the expression of the tumor-‐suppressor LATS2 and subsequent neutraliza&on of the p53 pathway.
Compromised Lats2 func&onality might reduce the selec&ve pressure for p53 inac&va&on during tumor progression.
Data sharing in biology
hip://en.wikipedia.org/wiki/File:Duck_of_Vaucanson.jpg
• Interspecies variability > A specimen is not a species! • Gene expression variability > Knowing genes is not
knowing how they are expressed! • Microbiome > An animal is an ecosystem! • Systems biology > Whole is more than the sum of its parts! • Models vs. experiment > Are we talking about the same
things? In a way we can all use? • Dynamics > Life is not in equilibrium! => Life is complicated!
Reduc&onism doesn’t work for living systems.
Sta&s&cs to the rescue! With enough observa&ons, trends and anomalies can be detected: • “Here we present resources from a popula&on of 242
healthy adults sampled at 15 or 18 body sites up to three &mes, which have generated 5,177 microbial taxonomic profiles from 16S ribosomal RNA genes and over 3.5 terabases of metagenomic sequence so far.”
The Human Microbiome Project Consor&um, Structure, func&on and diversity of the healthy human microbiome, Nature 486, 207–214 (14 June 2012) doi:10.1038/nature11234
• “The large sample size — 4,298 North Americans of European descent and 2,217 African Americans — has enabled the researchers to mine down into the human genome.”
Nidhi Subbaraman, Nature News, 28 November 2012, High-‐resolu&on sequencing study emphasizes importance of rare variants in disease.
• Collect: store data at the level of the experiment: – Accessible through a single interface – Add enough metadata to know what was done/seen
• Connect: allow analyses over: – Similar experiment types – Experiments done with/on similar biological ‘things’ (species, strains, systems, cells etc.)
– In a way that can be used by modelers! • Keep:
– Long-‐term preserva&on of data and soUware – Fulfill Data Management Plan requirements – Allow ‘gated’ access when and to whom researcher wants
Enable ‘incidental collaboratories’:
Let’s look at a typical lab:
• How to get the right an&body IDs
• And messy bits • From the lab notebook • Into the PI’s command center?
Objec&ons and rebuials re. data sharing Objec-on: Rebu>al:
“But our lab notebooks are all on paper”
Develop smart phone/tablet apps for data input
“I need to see a direct benefit from something I spend my &me on”
Develop ‘data manipula-on dashboard’ for PI to allow beier access to full experimental output for his/her lab
“I want things to be peer reviewed before I expose them”
Allow reviewers access to experimental database before publica&on (of data or paper)
“I don’t really trust anyone else’s data – well, except for the guys I went to Grad School with…”
Add a social networking component to this data repository so you know who (to the individual) created that data point.
“I am afraid other people might scoop my discoveries”
=> Reward system moves from a compe--on to a ‘shared mission’
Problem: biological research is quite insular • Biology is small: size 10^-‐5 – 10^2 m, scien&st can work alone (‘King’ and ‘subjects’).
• Biology is messy: it doesn’t happen behind a terminal.
• Biology is compe&&ve: many people with similar skill sets, vying for the same grants
• In summary: the structure of biological research does not inherently promote collabora&on (vs., for instance, big physics or astronomy).
Prepare
Observe
Analyze
Ponder
Communicate
So we can do joint experiments:
Prepare
Analyze Communicate
Prepare
Analyze Communicate
Observa&ons
Observa&ons
Observa&ons
Across labs, experiments: track reagents and how they are used
So we can do joint experiments:
Prepare
Analyze Communicate
Prepare
Analyze Communicate
Observa&ons
Observa&ons
Observa&ons
Compare outcome of interac&ons with these en&&es
So we can do joint experiments:
Prepare
Analyze Communicate
Prepare
Analyze Communicate
Observa&ons
Observa&ons
Observa&ons
Build a ‘virtual reagent spectrogram’ by comparing how different en&&es interacted in different experiments
Elsevier Research Data Services:
1. Help increase the amount of data shared from the lab, enabling incidental collaboratories
2. Help increase the value of the data shared by increasing annota&on, normaliza&on, provenance enabling enhanced interoperability
3. Help measure and deliver credit for shared data, the researchers, the ins&tute, and the funding body, enabling more sustainable pla�orms
Summary – Possible Collabora&ons?
• A model of scien&fic sensemaking: – Stories, that persuade with data – Discourse segments and verb tense
• Towards claim-‐evidence networks: – Hedging in science – Crea&ng claim-‐evidence networks
• Data: – Why life is so complicated – Connec&ng experiments into collaboratories
Thesis: joint research?
Labs: research collabora&ons?
RDS: joint development?
References: [1] J Am Med Inform Assoc. 2010 September; 17(5): 514–518 hip://dx.doi.org/10.1136/jamia.2010.003947 [2] Quanzhi Li, Yi-‐Fang Brook Wu (2006): Iden&fying important concepts from medical documents, Journal of Biomedical Informa&cs 39 (2006) 668–679 [3] Useful list of resources in bioinforma&cs hip://www.bioinforma&cs.ca/ [4] Biological Expression Language – hip://www.openbel.org [5] Latour, B. and Woolgar, S., Laboratory Life: the Social Construc&on of Scien&fic Facts, 1979, Sage Publica&ons [6] Light M, Qiu XY, Srinivasan P. (2004). The language of bioscience: facts, specula&ons, and statements in between. BioLINK 2004: Linking Biological Literature, Ontologies and Databases 2004:17-‐24. [7] Wilbur WJ, Rzhetsky A, Shatkay H (2006). New direc&ons in biomedical text annota&ons: defini&ons, guidelines and corpus construc&on. BMC Bioinforma&cs 2006, 7:356. [8] Thompson P., Venturi G., McNaught J, Montemagni S, Ananiadou S. (2008). Categorising modality in biomedical texts. Proc. LREC 2008 Wkshp Building and Evalua&ng Resources for Biomedical Text Mining 2008.
[9] Kim, S-‐M. Hovy, E.H. (2004). Determining the Sen&ment of Opinions. Proceedings of the COLING conference, Geneva, 2004. [10] de Waard, A. and Schneider, J. (2012) Formalising Uncertainty: An Ontology of Reasoning, Certainty and Airibu&on (ORCA), Seman&c Technologies Applied to Biomedical Informa&cs and Individualized Medicine workshop at ISWC 2012 (submiYed) [11] Data2Seman&cs project: hip://www.data2seman&cs.org/ [12] Boyce R, Collins C, Horn J, Kalet I. (2009) Compu&ng with evidence Part I: A drug-‐mechanism evidence taxonomy oriented toward confidence assignment. J Biomed Inform. 2009 Dec;42(6):979-‐89. Epub 2009 May 10, see also hip://dbmi-‐icode-‐01.dbmi.pii.edu/dikb-‐evidence/front-‐page.html [13] Sándor, Àgnes and de Waard, Anita, (2012). Iden&fying Claimed Knowledge Updates in Biomedical Research Ar&cles, Workshop on Detec&ng Structure in Scholarly Discourse, ACL 2012.