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The Anatomy of a Personalization System:
Three Case Studies




Derek Olson, Vice President, Foraker Design
Is your website acting like it’s on a first date
      instead of an anniversary dinner?
Case Studies:

1   Improving Health Care Decision Making

2   Custom Web to Print

3   Snakes on a Plane
What is
personalization?
“…involves using technology to accommodate the
differences between individuals.”




“Delivering the right information, to the right people, at
the right time, in the right format and language.”




“The combination of a ‘person’ and a bunch of
‘alization’”.
Person                    alization
(Business or website      (Machinery that measures,
owners, content writers   analyzes, and eventually
and editors, UX folk.     partially or fully automates
NOT the end user.)        content delivery)
When not to personalize

    When you have a crappy
     website
    When you don’t have a
     UCD program in place
    When you have a great
     website (but there’s no
     value add)
When you might consider personalization:
To surface relevant content that a user would otherwise not
know to look for


To identify high profit customers and then make them more
profitable


To partially or fully automate more effective marketing to
users or audience segments


 Key: add value above and beyond an already high-performing
 site or app
Key Steps of Personalization



       Measure! 
       Traffic, user feedback, customer inquiries,
       sales data, user demographics—anything
       that will help you make measurable
       improvements.
Key Steps of Personalization



       Develop and Test 
       Develop and test these improvements. Start
       simple. Collect data on what works. Refine.
Key Steps of Personalization



       Automate
       Find ways to automate delivery of personalized
       content or application functionality to users—when
       it makes sense.
Case Study 1

Breastcancer.org
Case Study 1

Breastcancer.org

 The “Person” -

 Breastcancer.org editorial
 and medical advisory staff.
Case Study 1

Breastcancer.org

 The “alization” -

     Custom Ruby on
      Rails
     PostgreSQL
      database
     SDL Tridion
      CMS
     Google Analytics
Case Study 1

Breastcancer.org


      “You have breast
          cancer...”
Case Study 1

Breastcancer.org




                   ?
Case Study 1

Breastcancer.org



Subtrac(on
Probe
Technology
   
   

Chromogenic
In
Situ
Hybridiza(on

Case Study 1

Breastcancer.org                      CA
15.3



  Colloid

                                    Thermography
              Cribriform




Subtrac(on
Probe
Technology   
   

Chromogenic
In
Situ
Hybridiza(on


             Mucinous



                                             Oncogene
Overexpression

Case Study 1

Breastcancer.org                               CA
15.3

              ER/PR+
                             Digital
Tomosynthesis

  Colloid
               Papillary

                                              Thermography
                Cribriform

             CA125



Subtrac(on
Probe
Technology
     
       

Chromogenic
In
Situ
Hybridiza(on


             Mucinous
               Ki‐67



 Comedo
                       Her2/neu

                                                      Oncogene
Overexpression


    Progesterone
Receptors
                         CA
27.29

Case Study 1

Breastcancer.org                                  CA
15.3
             Posi(ve
margins


              ER/PR+
                                 Digital
Tomosynthesis

  Colloid
                 Papillary

                                                 Thermography
                 Cribriform

             CA125

                 Ductal
Lavage
                      Ductal
Carcinoma
In
Situ


Subtrac(on
Probe
Technology
        
       

Chromogenic
In
Situ
Hybridiza(on


             Mucinous
                  Ki‐67
               ImmunoHistoChemistry



 Comedo
                          Her2/neu

                                                          Oncogene
Overexpression


    Progesterone
Receptors
                             CA
27.29

                                                 Fluorescence
In
Situ
Hybridiza(on

Case Study 1

Breastcancer.org




  And then, if you’re like an awful lot of folks, you’ll click on the first
  organic result, which is breastcancer.org…
Case Study 1

Breastcancer.org
Case Study 1

Breastcancer.org

Lessons from User Research…
Clear navigation and powerful
search were not enough


But, oh, the risks of
personalization…
Case Study 1

Breastcancer.org

Risks of Personalization…
Overly negative and/or poorly targeted
research articles

Too much info about advanced new
treatments that they were “missing out on”

Users unable to report their own diagnosis
information accurately
Case Study 1

Breastcancer.org


            Five vocabularies were developed to assign metadata to content.


                                       Clinical

    Audience
        Situa(on
                         Perspec(ve
            Topic

                                    Characteris(cs

Case Study 1

Breastcancer.org
        Audience     Patients
                     Family & Friends

                     Press & Public
                     Clinicians & Providers

                     Worried Well
Case Study 1

Breastcancer.org
        Situation     Just Diagnosed
                      Waiting for Test Results

                      Undergoing Treatment
                      Recovery & Renewal

                      Metastatic Cancer
                      End of Life
Case Study 1

Breastcancer.org
Clinical Characteristics     Lobular Carcinoma In Situ
                             Ductal Carcinoma In Situ

                             Inflammatory Breast Cancer
                             Recurrent Cancer

                             Metastatic
                             Lymph Node Involvement

                             Male Breast Cancer
                             Post-menopausal

                                                           *This is a partial list
Case Study 1

Breastcancer.org
      Perspective     Clinical
                      Emotional

                      Practical
                      Press / Public
Case Study 1

Breastcancer.org
           Topic     Environmental Risk Factors
                     Genetic Risk Factors
                     Symptoms, Self-Detection & Breast Self-Examination
                     Medical Screening and Testing
                     Dealing with Cancer Fear
                     Surgery
                     Chemotherapy
                     Radiation Therapy
                     Hormonal Therapy
                                                              *This is a partial list
Case Study 1

Breastcancer.org

   Audience
       Patients




   Situa,on
       Undergoing Treatment




    Clinical
      Lymph Nodes Removed: 20+
 Characteris,cs

Case Study 1

Breastcancer.org

   Audience
       Patients




   Situa,on
       Undergoing Treatment




    Clinical
      Estrogen Receptor+
                   Progesterone Receptor+
 Characteris,cs
   Pre-menopausal
Case Study 1

Breastcancer.org

   Audience
       Patients




   Situa,on
       Undergoing Treatment

                                            Audience


    Clinical
      Estrogen Receptor+
                   Progesterone Receptor+
 Characteris,cs
   Pre-menopausal
Case Study 1

Breastcancer.org
 Metadata for
 personal profiles
 was made possible
 by adding structure
 to already in-use
 signature
 information
Case Study 1

Breastcancer.org
  How it works

  Push personalized content to
  users based on profile info:
    Email
    Website content
    RSS (in funding)

  Breastcancer.org staff create
  rules for content metadata and
  personal metadata overlap
  “fingerprints” that add value
Case Study 1

Breastcancer.org
  Why Personalization is Important

   Allows breast cancer patients to fully
  understand their diagnosis—making them
  more likely to question their doctors.

   Provides extra information that users
  would not necessarily know to look for via
  search or navigation.
Case Study 2

Data Warehouse Client




 Formulary data (drug coverage across states, health plans, and tiers) is populated by a
 team of pharmacists that keep the database up-to-date daily via another piece of the
 application.
Case Study 2

Data Warehouse Client

 Why Personalize?
     Pharmaceutical corporations do
      their marketing everywhere.
     To convince doctors that a drug
      is cheaper than an alternative.
     Pharmaceutical sales reps can
      tailor printed marketing materials
      to individual doctors.
Case Study 2

Data Warehouse Client

 The “Person”

     Pharmaceutical corporation
      sales staff
Case Study 2

Data Warehouse Client

 The “alization”

     Custom ColdFusion
      application
     PostgreSQL database
     iText Java Library PDF
       rendering tool
Case Study 2

Data Warehouse Client

 How it works

 Sales reps start by selecting:
   Drug Class
     Drug
     State
     Health Plan
Case Study 2

Data Warehouse Client

 How it works

 Sales Reps may then select
 options such as:
   Whether to display co-pays
     The order in which results
      appear
     Bolding of results
Case Study 2

Data Warehouse Client

 How it works

     Sales reps may add “personal
      touches”, and then generate a print-
      ready PDF file.
     Automatically sent to approved print
      vendors for production.
Case Study 2

Data Warehouse Client

 Why Personalization is Important

   Allows sales staff to quickly turn up-to-date,
 national database of formulary information into
 glossy, personalized marketing materials.

   Fine control over data presentation,
 geographic coverage, and formatting add to
 effectiveness of marketing materials.
Case Study 3

ShipYourReptiles.com




                 (Snakes on a Plane)
Case Study 3

ShipYourReptiles.com

 Why Personalize?

     To target customer service
      resources, volume-based
      discounts, and value-add features
      towards certain purchasing profiles.
     Convenience = increased profits
     Preferred status = repeat business
      and collection of valuable feedback
Case Study 3

ShipYourReptiles.com

 The “Person”

 ShipYourReptiles customer
 service and sales staff:
   Reptile shipping experts
     Thorough understanding of
      UPS rate structure
     Capable of making account
      upgrades
Case Study 3

ShipYourReptiles.com

 The “alization”

     Custom Ruby on Rails
      application
     PostgreSQL database
     Google Analytics
Case Study 3

ShipYourReptiles.com

 How it works


 Due to unique requirements of UPS
 shipping label purchase, all users must
 create accounts to buy labels.

 Users may personalize their own accounts:
   Stored payment methods
     Address book for ship-from and ship-to
      addresses
Case Study 3

ShipYourReptiles.com

 How it works


 Account managers may
 review order activity, and
 upgrade accounts for high-
 volume customers.
Case Study 3

ShipYourReptiles.com

 Why Personalization is Important


 In eCommerce, every fraction of a percentage point counts
 when multiplied across thousands of orders and customers,
 day in and day out.
Conclusion: Review of Key Steps of Personalization:


      Measure!


      Develop and Test


      Automate
Questions?

Questions?
             Derek Olson
             VP, Foraker Design
             dlo@foraker.com
             (303) 449-0202

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Web Content Personalization: Three Case Studies

  • 1. The Anatomy of a Personalization System: Three Case Studies Derek Olson, Vice President, Foraker Design
  • 2. Is your website acting like it’s on a first date instead of an anniversary dinner?
  • 3. Case Studies: 1 Improving Health Care Decision Making 2 Custom Web to Print 3 Snakes on a Plane
  • 5. “…involves using technology to accommodate the differences between individuals.” “Delivering the right information, to the right people, at the right time, in the right format and language.” “The combination of a ‘person’ and a bunch of ‘alization’”.
  • 6. Person alization (Business or website (Machinery that measures, owners, content writers analyzes, and eventually and editors, UX folk. partially or fully automates NOT the end user.) content delivery)
  • 7. When not to personalize   When you have a crappy website   When you don’t have a UCD program in place   When you have a great website (but there’s no value add)
  • 8. When you might consider personalization: To surface relevant content that a user would otherwise not know to look for To identify high profit customers and then make them more profitable To partially or fully automate more effective marketing to users or audience segments Key: add value above and beyond an already high-performing site or app
  • 9. Key Steps of Personalization Measure! Traffic, user feedback, customer inquiries, sales data, user demographics—anything that will help you make measurable improvements.
  • 10. Key Steps of Personalization Develop and Test Develop and test these improvements. Start simple. Collect data on what works. Refine.
  • 11. Key Steps of Personalization Automate Find ways to automate delivery of personalized content or application functionality to users—when it makes sense.
  • 13. Case Study 1 Breastcancer.org The “Person” - Breastcancer.org editorial and medical advisory staff.
  • 14. Case Study 1 Breastcancer.org The “alization” -   Custom Ruby on Rails   PostgreSQL database   SDL Tridion CMS   Google Analytics
  • 15. Case Study 1 Breastcancer.org “You have breast cancer...”
  • 17. Case Study 1 Breastcancer.org Subtrac(on
Probe
Technology
 
 

Chromogenic
In
Situ
Hybridiza(on

  • 18. Case Study 1 Breastcancer.org CA
15.3
 Colloid
 Thermography
 Cribriform
 Subtrac(on
Probe
Technology 
 

Chromogenic
In
Situ
Hybridiza(on
 Mucinous
 Oncogene
Overexpression

  • 19. Case Study 1 Breastcancer.org CA
15.3
 ER/PR+
 Digital
Tomosynthesis
 Colloid
 Papillary
 Thermography
 Cribriform
 CA125
 Subtrac(on
Probe
Technology
 
 

Chromogenic
In
Situ
Hybridiza(on
 Mucinous
 Ki‐67
 Comedo
 Her2/neu
 Oncogene
Overexpression
 Progesterone
Receptors
 CA
27.29

  • 20. Case Study 1 Breastcancer.org CA
15.3
 Posi(ve
margins
 ER/PR+
 Digital
Tomosynthesis
 Colloid
 Papillary
 Thermography
 Cribriform
 CA125
 Ductal
Lavage
 Ductal
Carcinoma
In
Situ
 Subtrac(on
Probe
Technology
 
 

Chromogenic
In
Situ
Hybridiza(on
 Mucinous
 Ki‐67
 ImmunoHistoChemistry
 Comedo
 Her2/neu
 Oncogene
Overexpression
 Progesterone
Receptors
 CA
27.29
 Fluorescence
In
Situ
Hybridiza(on

  • 21. Case Study 1 Breastcancer.org And then, if you’re like an awful lot of folks, you’ll click on the first organic result, which is breastcancer.org…
  • 23. Case Study 1 Breastcancer.org Lessons from User Research… Clear navigation and powerful search were not enough But, oh, the risks of personalization…
  • 24. Case Study 1 Breastcancer.org Risks of Personalization… Overly negative and/or poorly targeted research articles Too much info about advanced new treatments that they were “missing out on” Users unable to report their own diagnosis information accurately
  • 25. Case Study 1 Breastcancer.org Five vocabularies were developed to assign metadata to content. Clinical
 Audience
 Situa(on
 Perspec(ve
 Topic
 Characteris(cs

  • 26. Case Study 1 Breastcancer.org Audience   Patients   Family & Friends   Press & Public   Clinicians & Providers   Worried Well
  • 27. Case Study 1 Breastcancer.org Situation   Just Diagnosed   Waiting for Test Results   Undergoing Treatment   Recovery & Renewal   Metastatic Cancer   End of Life
  • 28. Case Study 1 Breastcancer.org Clinical Characteristics   Lobular Carcinoma In Situ   Ductal Carcinoma In Situ   Inflammatory Breast Cancer   Recurrent Cancer   Metastatic   Lymph Node Involvement   Male Breast Cancer   Post-menopausal *This is a partial list
  • 29. Case Study 1 Breastcancer.org Perspective   Clinical   Emotional   Practical   Press / Public
  • 30. Case Study 1 Breastcancer.org Topic   Environmental Risk Factors   Genetic Risk Factors   Symptoms, Self-Detection & Breast Self-Examination   Medical Screening and Testing   Dealing with Cancer Fear   Surgery   Chemotherapy   Radiation Therapy   Hormonal Therapy *This is a partial list
  • 31. Case Study 1 Breastcancer.org Audience
 Patients Situa,on
 Undergoing Treatment Clinical
 Lymph Nodes Removed: 20+ Characteris,cs

  • 32. Case Study 1 Breastcancer.org Audience
 Patients Situa,on
 Undergoing Treatment Clinical
 Estrogen Receptor+ Progesterone Receptor+ Characteris,cs
 Pre-menopausal
  • 33. Case Study 1 Breastcancer.org Audience
 Patients Situa,on
 Undergoing Treatment Audience
 Clinical
 Estrogen Receptor+ Progesterone Receptor+ Characteris,cs
 Pre-menopausal
  • 34. Case Study 1 Breastcancer.org Metadata for personal profiles was made possible by adding structure to already in-use signature information
  • 35. Case Study 1 Breastcancer.org How it works Push personalized content to users based on profile info:   Email   Website content   RSS (in funding) Breastcancer.org staff create rules for content metadata and personal metadata overlap “fingerprints” that add value
  • 36. Case Study 1 Breastcancer.org Why Personalization is Important  Allows breast cancer patients to fully understand their diagnosis—making them more likely to question their doctors.  Provides extra information that users would not necessarily know to look for via search or navigation.
  • 37. Case Study 2 Data Warehouse Client Formulary data (drug coverage across states, health plans, and tiers) is populated by a team of pharmacists that keep the database up-to-date daily via another piece of the application.
  • 38. Case Study 2 Data Warehouse Client Why Personalize?   Pharmaceutical corporations do their marketing everywhere.   To convince doctors that a drug is cheaper than an alternative.   Pharmaceutical sales reps can tailor printed marketing materials to individual doctors.
  • 39. Case Study 2 Data Warehouse Client The “Person”   Pharmaceutical corporation sales staff
  • 40. Case Study 2 Data Warehouse Client The “alization”   Custom ColdFusion application   PostgreSQL database   iText Java Library PDF rendering tool
  • 41. Case Study 2 Data Warehouse Client How it works Sales reps start by selecting:   Drug Class   Drug   State   Health Plan
  • 42. Case Study 2 Data Warehouse Client How it works Sales Reps may then select options such as:   Whether to display co-pays   The order in which results appear   Bolding of results
  • 43. Case Study 2 Data Warehouse Client How it works   Sales reps may add “personal touches”, and then generate a print- ready PDF file.   Automatically sent to approved print vendors for production.
  • 44. Case Study 2 Data Warehouse Client Why Personalization is Important   Allows sales staff to quickly turn up-to-date, national database of formulary information into glossy, personalized marketing materials.   Fine control over data presentation, geographic coverage, and formatting add to effectiveness of marketing materials.
  • 45. Case Study 3 ShipYourReptiles.com (Snakes on a Plane)
  • 46. Case Study 3 ShipYourReptiles.com Why Personalize?   To target customer service resources, volume-based discounts, and value-add features towards certain purchasing profiles.   Convenience = increased profits   Preferred status = repeat business and collection of valuable feedback
  • 47. Case Study 3 ShipYourReptiles.com The “Person” ShipYourReptiles customer service and sales staff:   Reptile shipping experts   Thorough understanding of UPS rate structure   Capable of making account upgrades
  • 48. Case Study 3 ShipYourReptiles.com The “alization”   Custom Ruby on Rails application   PostgreSQL database   Google Analytics
  • 49. Case Study 3 ShipYourReptiles.com How it works
 Due to unique requirements of UPS shipping label purchase, all users must create accounts to buy labels. Users may personalize their own accounts:   Stored payment methods   Address book for ship-from and ship-to addresses
  • 50. Case Study 3 ShipYourReptiles.com How it works
 Account managers may review order activity, and upgrade accounts for high- volume customers.
  • 51. Case Study 3 ShipYourReptiles.com Why Personalization is Important
 In eCommerce, every fraction of a percentage point counts when multiplied across thousands of orders and customers, day in and day out.
  • 52. Conclusion: Review of Key Steps of Personalization: Measure! Develop and Test Automate
  • 53. Questions? Questions? Derek Olson VP, Foraker Design dlo@foraker.com (303) 449-0202