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Add Dr. C updates
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chapter1.qmd
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@ -12,33 +12,36 @@ hospitals had clinical laboratories by 1923 [@berger1999]. Before 1960,
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almost all testing in the laboratory was performed using manual methods.
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In the mid-1960s, a limited amount of automated analyzers became
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available, allowing for more rapid testing and running multiple tests at
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the same time [@park2017]. Since these early days of automation in the
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last fifty years, the clinical laboratory has rapidly expanded
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automation techniques. These include pre-packaged ready-to-use reagents,
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automated dispensing, incubation and measurement, automated sample
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processing (e.g., total laboratory automation systems, one- and
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two-dimensional bar codes, radio frequency identification tags),
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multiplexing tests from a single sample (e.g., microarrays), automated
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data processing (e.g., reference range, alert value comparisons, quality
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control assessment), automated interpretation (e.g., auto-verification),
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image analysis (e.g., automated peripheral blood smear morphology -
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CellaVision, whole slide scanning in surgical pathology), and mobile or
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static robots to operate analyzers [@park2017]. This rise in automation
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in the clinical laboratory has also led to the need for more advanced
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computer systems to go along with the advances in instrument technology.
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Over the past few decades, LISs have evolved from relatively narrow,
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often arcane, or home-grown systems into sophisticated systems that are
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more user-friendly and support a broader range of functions and
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integration with other technologies that laboratories deploy
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[@henricks2015]. Modern LISs consist of complex, interrelated computer
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programs and infrastructure that support laboratories' vast array of
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information-processing needs. LISs have functions in all phases of
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patient testing, including specimen and test order intake, specimen
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processing and tracking, support of analysis and interpretation, and
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report creation and distribution. In addition, LISs provide management
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reports and other data that laboratories need to run their operations
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and to support continuous improvement and quality initiatives
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[@henricks2015].
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the same time [@park2017].
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Since these early days of automation in the last fifty years, the
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clinical laboratory has rapidly expanded automation techniques. These
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include pre-packaged ready-to-use reagents, automated dispensing,
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incubation and measurement, automated sample processing (e.g., total
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laboratory automation systems, one- and two-dimensional bar codes, radio
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frequency identification tags), multiplexing tests from a single sample
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(e.g., microarrays), automated data processing (e.g., reference range,
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alert value comparisons, quality control assessment), automated
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interpretation (e.g., auto-verification), image analysis (e.g.,
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automated peripheral blood smear morphology - CellaVision, whole slide
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scanning in surgical pathology), and mobile or static robots to operate
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analyzers [@park2017]. This rise in automation in the clinical
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laboratory has also led to the need for more advanced computer systems
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to go along with the advances in instrument technology.
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Over the past few decades, Laboratory Information Systems (LIS) have
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evolved from relatively narrow, often arcane, or home-grown systems into
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sophisticated systems that are more user-friendly and support a broader
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range of functions and integration with other technologies that
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laboratories deploy [@henricks2015]. Modern LISs consist of complex,
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interrelated computer programs and infrastructure that support
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laboratories' vast array of information-processing needs. LISs have
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functions in all phases of patient testing, including specimen and test
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order intake, specimen processing and tracking, support of analysis and
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interpretation, and report creation and distribution. In addition, LISs
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provide management reports and other data that laboratories need to run
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their operations and to support continuous improvement and quality
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initiatives [@henricks2015].
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The clinical laboratory's primary business purpose is to provide testing
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results requested by physicians and other healthcare professionals. In a
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@ -55,21 +58,22 @@ algorithms; this is defined as 'reflective testing' [@srivastava2010].
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Both reflex and reflective testing became possible with the advent of
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laboratory information systems (LIS) that were sufficiently flexible to
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permit modification of existing test requests at various stages of the
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analytical process [@srivastava2010]. This research study will focus
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specifically on reflex testing, those tests added automatically by a set
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of rules established in each laboratory. In most current clinical
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laboratories, reflex testing is performed with a 'hard' cutoff, using a
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specifically established range with no means of flexibility
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[@murphy2021]. This study will examine the use of Machine learning to
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develop algorithms to allow flexibility for automatic reflex testing in
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clinical chemistry. The goal is to fill the gap between hard-coded
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reflex testing and fully manual reflective testing using machine
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learning algorithms.
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analytical process [@srivastava2010].
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This research study will focus specifically on reflex testing, those
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tests added automatically by a set of rules established in each
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laboratory. In most current clinical laboratories, reflex testing is
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performed with a 'hard' cutoff, using a specifically established range
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with no means of flexibility [@murphy2021]. This study will examine the
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use of Machine learning to develop algorithms to allow flexibility for
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automatic reflex testing in clinical chemistry. The goal is to fill the
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gap between hard-coded reflex testing and fully manual reflective
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testing using machine learning algorithms.
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## Purpose and Research Statement
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Develop and test a machine learning algorithm to establish if said
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algorithm can perform better then current hard coded rules to reduced
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algorithm can perform better than current hard-coded rules to reduce
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unnecessary patient testing.
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## Significance
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