def charts(self):
        case_finding_sql_data = self.case_finding_sql_data[0]
        sputum_conversion_report = ReportFactory.from_spec(
            StaticReportConfiguration.by_id('static-%s-sputum_conversion' %
                                            self.domain),
            include_prefilters=True)

        filter_values = {'date': self.datespan}

        locations_id = [
            Choice(value=location_id, display='')
            for location_id in self.report_config.locations_id if location_id
        ]

        if locations_id:
            filter_values['village'] = locations_id

        if self.report_config.is_migrated is not None:
            filter_values['is_migrated'] = Choice(
                value=self.report_config.is_migrated, display='')

        sputum_conversion_report.set_filter_values(filter_values)
        sputum_conversion_data = sputum_conversion_report.get_data()[0]
        charts_sql_data = self.charts_sql_data[0]
        treatment_outcome_sql_data = self.treatment_outcome_sql_data[0]

        default_value = {'sort_key': 0}

        chart = PieChart(title=_('Cases by Gender'), key='gender', values=[])
        chart.data = [{
            'label':
            _('Male'),
            'value':
            case_finding_sql_data.get('male_total', default_value)['sort_key']
        }, {
            'label':
            _('Female'),
            'value':
            case_finding_sql_data.get('female_total',
                                      default_value)['sort_key']
        }, {
            'label':
            _('Transgender'),
            'value':
            case_finding_sql_data.get('transgender_total',
                                      default_value)['sort_key']
        }]

        chart2 = MultiBarChart(_('Cases By Type'),
                               x_axis=Axis(''),
                               y_axis=Axis(''))
        chart2.stacked = False
        chart2.showLegend = False

        positive_smear = case_finding_sql_data.get('new_positive_tb_pulmonary',
                                                   default_value)['sort_key']
        negative_smear = case_finding_sql_data.get('new_negative_tb_pulmonary',
                                                   default_value)['sort_key']
        positive_extra_pulmonary = case_finding_sql_data.get(
            'new_positive_tb_extrapulmonary', default_value)['sort_key']

        relapse_cases = case_finding_sql_data.get('recurrent_positive_tb',
                                                  default_value)['sort_key']
        failure_cases = case_finding_sql_data.get('failure_positive_tb',
                                                  default_value)['sort_key']
        lfu_cases = case_finding_sql_data.get('lfu_positive_tb',
                                              default_value)['sort_key']
        others_cases = case_finding_sql_data.get('others_positive_tb',
                                                 default_value)['sort_key']

        chart2.add_dataset(_('New'), [{
            'x': 'Smear +ve',
            'y': positive_smear
        }, {
            'x': 'Smear -ve',
            'y': negative_smear
        }, {
            'x': 'EP',
            'y': positive_extra_pulmonary
        }])

        chart2.add_dataset(_('Retreatment'), [{
            'x': 'Relapse',
            'y': relapse_cases
        }, {
            'x': 'Failure',
            'y': failure_cases
        }, {
            'x': 'Treatment After Default',
            'y': lfu_cases
        }, {
            'x': 'Others',
            'y': others_cases
        }])

        chart3 = MultiBarChart('Sputum Conversion By Patient Type', Axis(''),
                               Axis(''))
        chart3.stacked = True

        chart3.add_dataset('Positive', [
            {
                'x':
                _('New Sputum +ve (2 month IP)'),
                'y':
                sputum_conversion_data.get(
                    'new_sputum_positive_patient_2months_ip', 0)
            },
            {
                'x':
                _('New Sputum +ve (3 month IP)'),
                'y':
                sputum_conversion_data.get(
                    'new_sputum_positive_patient_3months_ip', 0)
            },
            {
                'x':
                _('Cat II (3 month IP)'),
                'y':
                sputum_conversion_data.get('positive_endofip_patients_cat2', 0)
            },
        ])

        chart3.add_dataset(_('Negative'), [
            {
                'x':
                _('New Sputum +ve (2 month IP)'),
                'y':
                sputum_conversion_data.get(
                    'new_sputum_negative_patient_2months_ip', 0)
            },
            {
                'x':
                _('New Sputum +ve (3 month IP)'),
                'y':
                sputum_conversion_data.get(
                    'new_sputum_negative_patient_3months_ip', 0)
            },
            {
                'x':
                _('Cat II (3 month IP)'),
                'y':
                sputum_conversion_data.get('negative_endofip_patients_cat2', 0)
            },
        ])

        chart3.add_dataset('NA', [
            {
                'x':
                _('New Sputum +ve (2 month IP)'),
                'y':
                sputum_conversion_data.get('new_sputum_na_patient_2months_ip',
                                           0)
            },
            {
                'x':
                _('New Sputum +ve (3 month IP)'),
                'y':
                sputum_conversion_data.get('new_sputum_na_patient_3months_ip',
                                           0)
            },
            {
                'x': _('Cat II (3 month IP)'),
                'y': sputum_conversion_data.get('na_endofip_patients_cat2', 0)
            },
        ])

        chart4 = PieChart(title=_('Total number of patients by category'),
                          key='',
                          values=[])
        chart4.data = [{
            'label':
            _('Cat1'),
            'value':
            charts_sql_data.get('cat1_patients', default_value)['sort_key']
        }, {
            'label':
            _('Cat2'),
            'value':
            charts_sql_data.get('cat2_patients', default_value)['sort_key']
        }]

        chart5 = MultiBarChart('Outcome By Type', Axis(''), Axis(''))
        chart5.stacked = True

        chart5.add_dataset(_('Cured'), [{
            'x':
            _('New'),
            'y':
            treatment_outcome_sql_data.get('new_patients_cured',
                                           default_value)['sort_key']
        }, {
            'x':
            _('Retreatment'),
            'y':
            treatment_outcome_sql_data.get('recurrent_patients_cured',
                                           default_value)['sort_key']
        }])
        chart5.add_dataset('Treatment Complete', [{
            'x':
            _('New'),
            'y':
            treatment_outcome_sql_data.get('new_patients_treatment_complete',
                                           default_value)['sort_key']
        }, {
            'x':
            _('Retreatment'),
            'y':
            treatment_outcome_sql_data.get(
                'recurrent_patients_treatment_complete',
                default_value)['sort_key']
        }])
        chart5.add_dataset('Died', [{
            'x':
            _('New'),
            'y':
            treatment_outcome_sql_data.get('new_patients_died',
                                           default_value)['sort_key']
        }, {
            'x':
            _('Retreatment'),
            'y':
            treatment_outcome_sql_data.get('recurrent_patients_died',
                                           default_value)['sort_key']
        }])
        chart5.add_dataset(_('Failure'), [{
            'x':
            _('New'),
            'y':
            treatment_outcome_sql_data.get('new_patients_treatment_failure',
                                           default_value)['sort_key']
        }, {
            'x':
            _('Retreatment'),
            'y':
            treatment_outcome_sql_data.get(
                'recurrent_patients_treatment_failure',
                default_value)['sort_key']
        }])
        chart5.add_dataset(_('Loss to Follow-up'), [{
            'x':
            _('New'),
            'y':
            treatment_outcome_sql_data.get('new_patients_loss_to_follow_up',
                                           default_value)['sort_key']
        }, {
            'x':
            _('Retreatment'),
            'y':
            treatment_outcome_sql_data.get(
                'recurrent_patients_loss_to_follow_up',
                default_value)['sort_key']
        }])
        chart5.add_dataset(_('Regimen Changed'), [{
            'x':
            _('New'),
            'y':
            treatment_outcome_sql_data.get('new_patients_regimen_changed',
                                           default_value)['sort_key']
        }, {
            'x':
            _('Retreatment'),
            'y':
            treatment_outcome_sql_data.get(
                'recurrent_patients_regimen_changed',
                default_value)['sort_key']
        }])
        chart5.add_dataset('Not Evaluated', [{
            'x':
            _('New'),
            'y':
            treatment_outcome_sql_data.get('new_patients_not_evaluated',
                                           default_value)['sort_key']
        }, {
            'x':
            _('Retreatment'),
            'y':
            treatment_outcome_sql_data.get('recurrent_patients_not_evaluated',
                                           default_value)['sort_key']
        }])

        return [chart, chart2, chart3, chart4, chart5]
Beispiel #2
0
    def charts(self):
        case_finding_sql_data = self.case_finding_sql_data[0]
        sputum_conversion_report = ReportFactory.from_spec(
            StaticReportConfiguration.by_id('static-%s-sputum_conversion' % self.domain), include_prefilters=True
        )

        filter_values = {'date': QuarterFilter.get_value(self.request, self.domain)}

        locations_id = [
            Choice(value=location_id, display='') for location_id in self.report_config.locations_id
            if location_id
        ]

        if locations_id:
            filter_values['village'] = locations_id

        sputum_conversion_report.set_filter_values(filter_values)
        sputum_conversion_data = sputum_conversion_report.get_data()[0]
        charts_sql_data = self.charts_sql_data[0]
        treatment_outcome_sql_data = self.treatment_outcome_sql_data[0]

        default_value = {'sort_key': 0}

        chart = PieChart(title=_('Cases by Gender'), key='gender', values=[])
        chart.data = [
            {'label': _('Male'), 'value': case_finding_sql_data.get('male_total', default_value)['sort_key']},
            {
                'label': _('Female'),
                'value': case_finding_sql_data.get('female_total', default_value)['sort_key']
            },
            {
                'label': _('Transgender'),
                'value': case_finding_sql_data.get('transgender_total', default_value)['sort_key']
            }
        ]

        chart2 = MultiBarChart(_('Cases By Type'), x_axis=Axis(''), y_axis=Axis(''))
        chart2.stacked = False
        chart2.showLegend = False

        positive_smear = case_finding_sql_data.get('new_positive_tb_pulmonary', default_value)['sort_key']
        negative_smear = case_finding_sql_data.get('new_negative_tb_pulmonary', default_value)['sort_key']
        positive_extra_pulmonary = case_finding_sql_data.get(
            'new_positive_tb_extrapulmonary', default_value
        )['sort_key']

        relapse_cases = case_finding_sql_data.get('recurrent_positive_tb', default_value)['sort_key']
        failure_cases = case_finding_sql_data.get('failure_positive_tb', default_value)['sort_key']
        lfu_cases = case_finding_sql_data.get('lfu_positive_tb', default_value)['sort_key']
        others_cases = case_finding_sql_data.get('others_positive_tb', default_value)['sort_key']

        chart2.add_dataset(
            _('New'),
            [
                {'x': 'Smear +ve', 'y': positive_smear},
                {'x': 'Smear -ve', 'y': negative_smear},
                {'x': 'EP', 'y': positive_extra_pulmonary}
            ]
        )

        chart2.add_dataset(
            _('Retreatment'), [
                {'x': 'Relapse', 'y': relapse_cases},
                {'x': 'Failure', 'y': failure_cases},
                {'x': 'Treatment After Default', 'y': lfu_cases},
                {'x': 'Others', 'y': others_cases}
            ]
        )

        chart3 = MultiBarChart('Sputum Conversion By Patient Type', Axis(''), Axis(''))
        chart3.stacked = True

        chart3.add_dataset('Positive', [
            {
                'x': _('New Sputum +ve (2 month IP)'),
                'y': sputum_conversion_data.get('new_sputum_positive_patient_2months_ip', 0)
            },
            {
                'x': _('New Sputum +ve (3 month IP)'),
                'y': sputum_conversion_data.get('new_sputum_positive_patient_3months_ip', 0)
            },
            {
                'x': _('Cat II (3 month IP)'),
                'y': sputum_conversion_data.get('positive_endofip_patients_cat2', 0)
            },
        ])

        chart3.add_dataset(_('Negative'), [
            {
                'x': _('New Sputum +ve (2 month IP)'),
                'y': sputum_conversion_data.get('new_sputum_negative_patient_2months_ip', 0)
            },
            {
                'x': _('New Sputum +ve (3 month IP)'),
                'y': sputum_conversion_data.get('new_sputum_negative_patient_3months_ip', 0)
            },
            {
                'x': _('Cat II (3 month IP)'),
                'y': sputum_conversion_data.get('negative_endofip_patients_cat2', 0)
            },
        ])

        chart3.add_dataset('NA', [
            {
                'x': _('New Sputum +ve (2 month IP)'),
                'y': sputum_conversion_data.get('new_sputum_na_patient_2months_ip', 0)
            },
            {
                'x': _('New Sputum +ve (3 month IP)'),
                'y': sputum_conversion_data.get('new_sputum_na_patient_3months_ip', 0)
            },
            {
                'x': _('Cat II (3 month IP)'),
                'y': sputum_conversion_data.get('na_endofip_patients_cat2', 0)
            },
        ])

        chart4 = PieChart(
            title=_('Total number of patients by category'), key='', values=[]
        )
        chart4.data = [
            {
                'label': _('Cat1'),
                'value': charts_sql_data.get('cat1_patients', default_value)['sort_key']
            },
            {
                'label': _('Cat2'),
                'value': charts_sql_data.get('cat2_patients', default_value)['sort_key']
            }
        ]

        chart5 = MultiBarChart('Outcome By Type', Axis(''), Axis(''))
        chart5.stacked = True

        chart5.add_dataset(_('Cured'), [
            {
                'x': _('New'),
                'y': treatment_outcome_sql_data.get('new_patients_cured', default_value)['sort_key']
            },
            {
                'x': _('Retreatment'),
                'y': treatment_outcome_sql_data.get('recurrent_patients_cured', default_value)['sort_key']
            }
        ])
        chart5.add_dataset('Treatment Complete', [
            {
                'x': _('New'),
                'y': treatment_outcome_sql_data.get('new_patients_treatment_complete', default_value)['sort_key']
            },
            {
                'x': _('Retreatment'),
                'y': treatment_outcome_sql_data.get(
                    'recurrent_patients_treatment_complete', default_value)['sort_key']
            }
        ])
        chart5.add_dataset('Died', [
            {
                'x': _('New'),
                'y': treatment_outcome_sql_data.get('new_patients_died', default_value)['sort_key']
            },
            {
                'x': _('Retreatment'),
                'y': treatment_outcome_sql_data.get('recurrent_patients_died', default_value)['sort_key']
            }
        ])
        chart5.add_dataset(_('Failure'), [
            {
                'x': _('New'),
                'y': treatment_outcome_sql_data.get('new_patients_treatment_failure', default_value)['sort_key']
            },
            {
                'x': _('Retreatment'),
                'y': treatment_outcome_sql_data.get(
                    'recurrent_patients_treatment_failure', default_value
                )['sort_key']
            }
        ])
        chart5.add_dataset(_('Loss to Follow-up'), [
            {
                'x': _('New'),
                'y': treatment_outcome_sql_data.get('new_patients_loss_to_follow_up', default_value)['sort_key']
            },
            {
                'x': _('Retreatment'),
                'y': treatment_outcome_sql_data.get(
                    'recurrent_patients_loss_to_follow_up', default_value
                )['sort_key']
            }
        ])
        chart5.add_dataset(_('Regimen Changed'), [
            {
                'x': _('New'),
                'y': treatment_outcome_sql_data.get('new_patients_regimen_changed', default_value)['sort_key']
            },
            {
                'x': _('Retreatment'),
                'y': treatment_outcome_sql_data.get(
                    'recurrent_patients_regimen_changed', default_value
                )['sort_key']
            }
        ])
        chart5.add_dataset('Not Evaluated', [
            {
                'x': _('New'),
                'y': treatment_outcome_sql_data.get('new_patients_not_evaluated', default_value)['sort_key']
            },
            {
                'x': _('Retreatment'),
                'y': treatment_outcome_sql_data.get('recurrent_patients_not_evaluated', default_value)['sort_key']
            }
        ])

        return [
            chart,
            chart2,
            chart3,
            chart4,
            chart5
        ]
Beispiel #3
0
 def charts(self):
     if 'location_id' in self.request.GET:  # hack: only get data if we're loading an actual report
         chart = PieChart(_('Current Reporting'), 'current_reporting', [])
         chart.data = self.master_pie_chart_data()
         return [chart]
Beispiel #4
0
 def charts(self):
     if 'location_id' in self.request.GET: # hack: only get data if we're loading an actual report
         chart = PieChart(_('Current Reporting'), 'current_reporting', [])
         chart.data = self.master_pie_chart_data()
         return [chart]